BCA Indicators/Model
GAA DM Equity Country Allocation Model Update The GAA DM Equity Country Allocation model is updated as of July 31, 2020. The model has not made any meaningful adjustment to the top overweight countries with the top four remaining the US, Spain, Australia, and Sweden. Within the underweight countries, however, the UK has dropped out of the top four, replaced by Germany. Japan, France, and Switzerland remain in the top 4 underweight countries, as shown in Table 1. Table 1Model Allocation Vs. Benchmark Weights
GAA Quant Model Updates
GAA Quant Model Updates
As shown in Table 2 and Charts 1, 2 and 3, the overall model outperformed the MSCI World benchmark by 73 bps in July, with positive contributions from both the Level 1 and the Level 2 models. The Level 2 model outperformed its benchmark by 176 bps, thanks largely to the underweight in Japan and the UK, as well as the overweight in Sweden. The Level 1 model outperformed by 27 bps due to the large overweight in the US. Since going live, the overall model has outperformed its MSCI World benchmark by 390 bps, with 714 bps of outperformance from the Level 2 model, and 74 bps of outperformance from the Level 1 model. Table 2Performance (Total Returns In USD %)
GAA Quant Model Updates
GAA Quant Model Updates
Chart 1GAA DM Model Vs. MSCI World
GAA DM Model Vs. MSCI World
GAA DM Model Vs. MSCI World
Chart 2GAA US Vs. Non US Model (Level 1)
GAA US Vs. Non US Model (Level 1)
GAA US Vs. Non US Model (Level 1)
Chart 3GAA Non US Model (Level 2)
GAA Non US Model (Level 2)
GAA Non US Model (Level 2)
GAA Equity Sector Selection Model The GAA Equity Sector Model (Chart 4) is updated as of July 31, 2020. The model’s relative tilts between cyclicals and defensives did not change compared to last month. The model continues to maintain its cyclical stance driven by an improvement in its global growth proxy and remains exposed to cyclical sectors. Over the past month, the model outperformed its benchmark by 32 basis points. Year-to-date, the model has outperformed its benchmark by 144 basis points, and 149 basis points since inception. Chart 4Overall Model Performance
Overall Model Performance
Overall Model Performance
Table 3Overall Model Performance
GAA Quant Model Updates
GAA Quant Model Updates
The model’s global growth proxy improved – driven by appreciating EM currencies and rising metal prices, and therefore continues to remain positive on cyclical sectors. Global monetary easing and low rates should keep the liquidity component favoring a mixed bag of cyclical and defensive sectors. The valuation component remains muted across all sectors except Energy. However, multiple sectors continue to be near the expensive and cheap zones – mainly Info Tech and Consumer Discretionary (expensive), and Real Estate and Consumer Staples (cheap). The model awaits confirming momentum signals to change recommendations for those sectors. Table 4Current Model Allocations
GAA Quant Model Updates
GAA Quant Model Updates
The model is now overweight four cyclical sectors in total. These are Information Technology, Consumer Discretionary, Communication Services, and Materials. For more details on the model, please see the Special Report “Introducing the GAA Equity Sector Selection Model”, dated July 27, 2016, as well as the Sector Selection Model section in the Special Alert “GAA Quant Model Updates”, dated March 1, 2019 available at https://gaa.bcaresearch.com. Xiaoli Tang Associate Vice President xiaoliT@bcaresearch.com Amr Hanafy Senior Analyst amrh@bcaresearch.com
Highlights The tech sector faces mounting domestic political and geopolitical risks. We fully expected stimulus hiccups but believe they will give way to large new fiscal support, given that COVID-19 is weighing on consumer confidence. Europe’s relative political stability is a good basis for the euro rally but any comeback in opinion polling by President Trump could give dollar bulls new life. DXY is approaching a critical threshold below which it would break down further. The US could take aggressive actions on Russia and Iran, but China and the Taiwan Strait remain the biggest geopolitical risk. Feature Near-term risks continue to mount against the equity rally, even as governments’ combined monetary and fiscal policies continue to support a cyclical economic rebound. Chart 1Tech Bubble Amid Tech War
Tech Bubble Amid Tech War
Tech Bubble Amid Tech War
Testimony by the chief executives of Facebook, Apple, Amazon, and Alphabet to the US House of Representatives highlighted the major political risks facing the market leaders. There are three reasons not to dismiss these risks despite the theatrical nature of the hearings. First, the tech companies’ concentration of wealth would be conspicuous during any economic bust, but this bust has left pandemic-stricken consumers more reliant on their services. Second, acrimony is bipartisan – conservatives are enraged by the tendency of the tech companies to side with the Democratic Party in policing the range of acceptable political discourse, and they increasingly agree with liberals that the companies have excessive corporate power warranting anti-trust probes. Executive action is the immediate risk, but in the coming one-to-two years congressional majorities will also be mustered to tighten regulation. Third, technology is the root of the great power struggle between the US and China – a struggle that will not go away if Biden wins the election. Indeed Biden was part of the administration that launched the US’s “Pivot to Asia” and will have better success in galvanizing US diplomatic allies behind western alternatives to Chinese state-backed and military-linked tech companies. US tech companies struggle to outperform Chinese tech companies except during episodes of US tariffs, given the latter firms’ state-backed turn toward innovation and privileged capture of the Chinese domestic market (Chart 1). The US government cannot afford to break up these companies without weighing the strategic consequences for America’s international competitiveness. The attempt to coordinate a western pressure campaign against Huawei and other leading Chinese firms will continue over the long run as they are accused of stealing technology, circumventing UN sanctions, violating human rights, and compromising the national security of the democracies. China, for its part, will be forced to take counter-measures. US tech companies will be caught in the middle. Like the threat of executive regulation in the domestic sphere, the threat of state action in the international sphere is difficult to time. It could happen immediately, especially given that the US is having some success in galvanizing an alliance even under President Trump (see the UK decision to bar Huawei) and that President Trump’s falling election prospects remove the chief constraint on tough action against China (the administration will likely revoke Huawei’s general license on August 13 or closer to the election). Massive domestic economic stimulus empowers the US to impose a technological cordon and China to retaliate. Combining this headline risk to the tech sector with other indications that the equity rally is extended – the surge in gold prices, the fall in the 30-year/5-year Treasury slope – tells us that investors should be cautious about deploying fresh capital in the near term. Republicans Will Capitulate To New Stimulus Just as President Trump has ignored bad news on the coronavirus, financial markets have ignored bad news on the economy. Dismal Q2 GDP releases were fully expected – Germany shrank by 10.1% while the US shrank by 9.5% on a quarterly basis, 32.9% annualized. But the resurgence of the virus is threatening new government restrictions on economic activity. US initial unemployment claims have edged up over the past three weeks. US consumer confidence regarding future expectations plummeted from 106.1 in June to 91.5 in July, according to the Conference Board’s index. Chart 2Global Instability Will Follow Recession
A Tech Bubble Amid A Tech War (GeoRisk Update)
A Tech Bubble Amid A Tech War (GeoRisk Update)
Setbacks in combating the virus will hurt consumers even assuming that governments lack the political will to enforce new lockdowns. The share of countries in recession has surged to levels not seen in 60 years (Chart 2). Financial markets can look past recessions, but the pandemic-driven recession will result in negative surprises and second-order effects that are unforeseen. Yes, fresh fiscal stimulus is coming, but this is more positive for the cyclical outlook than the tactical outlook. Stimulus “hiccups” could precipitate a near-term pullback – such a pullback may be necessary to force politicians to resolve disputes over the size and composition of new stimulus. This risk is immediate in the United States, where House Democrats, Senate Republicans, and the White House have hit an all-too-predictable impasse over the fifth round of stimulus. The bill under negotiation is likely to be President Trump’s last chance to score a legislative victory before the election and the last significant legislative economic relief until early 2021. The Senate Republicans have proposed a $1.1 trillion HEALS Act in response to the House Democrats’ $3.4 trillion HEROES Act, passed in mid-May. As we go to press, the federal unemployment insurance top-up of $600 per week is expiring, with a potential cost of 3% of GDP in fiscal tightening, as well as the moratorium on home evictions. Congress will have to rush through a stop-gap measure to extend these benefits if it cannot resolve the debate on the larger stimulus package. If Democrats and Republicans split the difference then we will get $2.5 trillion in stimulus, likely by August 10. Compromise on the larger package is easy in principle, as Table 1 shows. If the two sides split the difference between their proposals in a commonsense way, as shown in the fourth and fifth columns of Table 1, then the result will be a $2.5 trillion stimulus. This estimate fits with what we have published in the past and likely meets market expectations for the time being. Table 1Outline Of Fifth US COVID Stimulus Package (Estimate)
A Tech Bubble Amid A Tech War (GeoRisk Update)
A Tech Bubble Amid A Tech War (GeoRisk Update)
Whether it is enough for the economy depends on how the virus develops and how governments respond once flu season picks up and combines with the coronavirus to pressure the health system this fall. A back-of-the-envelope estimate of the amount of spending necessary to keep the budget deficit from shrinking in the second half of the year comes much closer to the House Democrats’ $3.4 trillion bill (Table 2), which suggests that what appears to be a massive stimulus today could appear insufficient tomorrow. Nevertheless, $2.5 trillion is not exactly small. It would bring the US total to $5 trillion year-to-date, or 24% of GDP! Table 2Reducing The Budget Deficit On A Quarterly Basis Will Slow Economy
A Tech Bubble Amid A Tech War (GeoRisk Update)
A Tech Bubble Amid A Tech War (GeoRisk Update)
While a compromise bill should come quickly, the Republican Party is more divided over this round of stimulus than earlier this year. Chart 3US Personal Income Looks Good Compared To 2008-09
US Personal Income Looks Good Compared To 2008-09
US Personal Income Looks Good Compared To 2008-09
First, there is some complacency due to the fact that the economy is recovering, not collapsing as was the case back in March. Our US bond strategist, Ryan Swift, has shown that US personal income is much better off, thus far, than it was in the months following the 2008 financial crisis, even though the initial pre-transfer hit to incomes is larger (Chart 3). Second, the Republican Party is reacting to growing unease within its ranks over the yawning budget deficit, now the largest since World War II (Chart 4). Chart 4If Republicans React To Deficit Concerns They Cook Their Own Goose
If Republicans React To Deficit Concerns They Cook Their Own Goose
If Republicans React To Deficit Concerns They Cook Their Own Goose
Chart 5Consumer Confidence Sends Warning Signal To Republicans
A Tech Bubble Amid A Tech War (GeoRisk Update)
A Tech Bubble Amid A Tech War (GeoRisk Update)
If Republicans are guided by complacency and fiscal hawks, they will cook their own goose. A failure to provide government support will cause a financial market selloff, will hurt consumer confidence, and will put the final nail in the coffin of their own chance of re-election as well as President Trump’s. Consumer confidence tracks fairly well with presidential approval rating and election outcomes. A further dip could disqualify Trump, whereas a last-minute boost due to stimulus and an economic surge could line him up for a comeback in the last lap (Chart 5). These constraints are obvious so we maintain our high conviction call that a bill will be passed, likely by August 10. But at these levels on the equity market, we simply have no confidence in the market gyrations leading up to or following the passage of the bill. Our conviction level is on the cyclical, 12-month horizon, in which case we expect US and global stimulus to operate and equities to rise. Bottom Line: Political and economic constraints will force Republicans to join Democrats and pass a new stimulus bill of about $2.5 trillion by around August 10. This is cyclically positive, but hiccups in getting it passed, negative surprises, and other risks tied to US politics discourage us from taking an overtly bullish stance over the next three months. Yes, US-China Tensions Are Still Relevant Chart 6Chinese Politburo"s Bark Worse Than Bite On Stimulus
Chinese Politburo"s Bark Worse Than Bite On Stimulus
Chinese Politburo"s Bark Worse Than Bite On Stimulus
Financial markets have shrugged off US-China tensions this year for understandable reasons. The pandemic, recession, and stimulus have overweighed the ongoing US-China conflict. As we have argued, China is undertaking a sweeping fiscal and quasi-fiscal stimulus – despite lingering hawkish rhetoric – and the size is sufficient to assist in global economic recovery as well as domestic Chinese recovery. What the financial market overlooks is that China’s households and firms are still reluctant to spend (Chart 6). China’s Politburo's late July meetings on the economy are frequently important. Initial reports of this year’s meet-up reinforce the stimulus narrative. Hints of hawkishness here and there serve a political purpose in curbing market exuberance, both at home and in the US election context, but China will ultimately remain accommodative because it has already bumped up against its chief constraint of domestic stability. Note that this assessment also leaves space for market jitters in the near-term. The phase one trade deal remains intact as President Trump is counting on it to make the case for re-election while China is looking to avoid antagonizing a loose cannon president who still has a chance of re-election. As long as broad-based tariff rates do not rise, in keeping with Trump’s deal, financial markets can ignore the small fry. We maintain a 40% risk that Trump levels sweeping punitive measures; our base case is that he goes to the election arguing that he gets results through his deal-making while carrying a big stick. At the same time, our view that domestic stimulus removes the economic constraints on conflict, enabling the two countries to escalate tensions, has been vindicated in recent weeks. Chinese political risk continues on a general uptrend, based on market indicators. The market is also starting to price in the immense geopolitical risks embedded in Taiwan’s situation, which we have highlighted consistently since 2016. While North Korea remains on a diplomatic track, refraining from major military provocations, South Korean political risk is still elevated both for domestic and regional reasons (Chart 7). Chart 7China Political Risk Still Trending Upward
China Political Risk Still Trending Upward
China Political Risk Still Trending Upward
The market is gradually pricing in a higher risk premium in the renminbi, Taiwanese dollar, and Korean won, and this pricing accords with our longstanding political assessment. The closure of the US and Chinese consulates in Houston and Chengdu is only the latest example of this escalating dynamic. While the US’s initial sanctions on China over Hong Kong were limited in economic impact, the longer term negative consequences continue to build. Hong Kong was the symbol of the Chinese Communist Party’s compatibility with western liberalism; the removal of Hong Kong’s autonomy strikes a permanent blow against this compatibility. China’s decision to go forward with the imposition of a national security law in Hong Kong – and now to bar pro-democratic candidates from the September 6 Legislative Council elections, which will probably be postponed anyway – has accelerated coalition-building among the western democracies. The UK is now clashing with China more openly, especially after blocking Huawei from its 5G system and welcoming Hong Kong political refugees. Australia and China have fought a miniature trade war of their own over China’s lack of transparency regarding COVID-19, and Canada is implicated in the Huawei affair. Even the EU has taken a more “realist” approach to China. Across the Taiwan Strait, political leaders are assisting fleeing Hong Kongers, crying out against Beijing’s expansion of control in its periphery, rallying support from informal allies in the US and West, and doubling down on their “Silicon Shield” (prowess in semiconductor production) as a source of protection. Intel Corporation’s decision to increase its dependency on TSMC for advanced microchips only heightens the centrality of this island and this company in the power struggle between the US and China. China cannot fulfill its global ambitions if the US succeeds in creating a technological cordon. Taiwan is the key to China’s breaking through that cordon. Therefore Taiwan is at heightened risk of economic or even military conflict. The base case is that Beijing will impose economic sanctions first, to undermine Taiwanese leadership. The uncertainty over the US’s willingness to defend Taiwan is still elevated, even if the US is gradually signaling a higher level of commitment. This uncertainty makes strategic miscalculations more likely than otherwise. But Taiwan’s extreme economic dependence on the mainland gives Beijing a lever to pursue its interests and at present that is the most important factor in keeping war risk contained. By the same token, Taiwanese economic and political diversification increases that risk. A “fourth Taiwan Strait crisis” that involves trade war and sanctions is our base case, but war cannot be ruled out, and any war would be a major war. Thus investors can safely ignore Tik-Tok, Hong Kong LegCo elections, and accusations of human rights violations in Xinjiang. But they cannot ignore concrete deterioration in the Taiwan Strait. Or, for that matter, the South and East China Seas, which are not about fishing and offshore drilling but about China’s strategic depth and positioning around Taiwan. Taiwan is at heightened risk of economic or military conflict. The latest developments have seen the CNY-USD exchange rate roll over after a period of appreciation associated with bilateral deal-keeping (Chart 8). Depreciation makes it more likely that President Trump will take punitive actions, but these will still be consistent with maintaining the phase one deal unless his re-election bid completely collapses, rendering him a lame duck and removing his constraints on more economically significant confrontation. We are perilously close to such an outcome, which is why Trump’s approval rating and head-to-head polling against Joe Biden must be monitored closely. If his budding rebound is dashed, then all bets are off with regard to China and Asian power politics. Chart 8A Warning Of Further US-China Escalation
A Warning Of Further US-China Escalation
A Warning Of Further US-China Escalation
Bottom Line: China’s stimulus, like the US stimulus, is a reason for cyclical optimism regarding risk assets. The phase one trade deal with President Trump is less certain – there is a 40% chance it collapses as stimulus and/or Trump’s political woes remove constraints on conflict. Hong Kong is a red herring except with regard to coalition-building between the US and Europe; the Taiwan Strait is the real geopolitical risk. Maritime conflicts relate to Taiwan and are also market-relevant. Europe, Russia, And Oil Risks Europe has proved a geopolitical opportunity rather than a risk, as we have contended. The passage of joint debt issuance in keeping with the seven-year budget reinforces the point. The Dutch, facing an election early next year, held up the negotiations, but ultimately relented as expected. Emmanuel Macron, who convinced German Chancellor Angela Merkel to embrace this major compromise for European solidarity, is seeing his support bounce in opinion polls at home. He is being rewarded for taking a leadership position in favor of European integration as well as for overseeing a domestic economic rebound. His setback in local elections is overstated as a political risk given that the parties that benefited do not pose a risk to European integration, and will ally with him in 2022 against any populist or anti-establishment challenger. We still refrain from reinitiating our long EUR-USD trade, however, given the immediate risks from the US election cycle (Chart 9). We will reevaluate if Trump’s odds of victory fall further. A Biden victory is very favorable for the euro in our view. Chart 9EUR-USD Gets Boost From EU Solidarity
EUR-USD Gets Boost From EU Solidarity
EUR-USD Gets Boost From EU Solidarity
We are bullish on pound sterling because even a delay or otherwise sub-optimal outcome to trade talks is mostly priced in at current levels (Charts 10A and 10B). Prime Minister Boris Johnson has the raw ability to walk away without a deal, in the context of strong domestic stimulus, but the long-term economic consequences could condemn him to a single term in office. Compromise is better and in both parties’ interests. Chart 10APound Sterling A Buy Over Long Run
Pound Sterling A Buy Over Long Run
Pound Sterling A Buy Over Long Run
Chart 10BPound Sterling A Buy Over Long Run
Pound Sterling A Buy Over Long Run
Pound Sterling A Buy Over Long Run
Two other risks are worth a mention in this month’s GeoRisk Update: Chart 11Russia: GeoRisk Indicator Russian Bonds May Face Sanctions
Russia: GeoRisk Indicator Russian Bonds May Face Sanctions
Russia: GeoRisk Indicator Russian Bonds May Face Sanctions
Russia: In recent reports we have maintained that Russian geopolitical risk is understated by markets. Domestic unrest is rising, the Trump administration could impose penalties over Nordstream 2 or other issues to head off criticism on the campaign trail, and a Biden administration would be outright confrontational toward Putin’s regime. Moscow may intervene in the US elections or conduct larger cyber attacks. US sanctions could ultimately target trading of local currency Russian government bonds, which so far have been spared (Chart 11). Iran: The jury is still out on whether the recent series of mysterious explosions affecting critical infrastructure in Iran are evidence of a clandestine campaign of sabotage (Table 3). The nature of the incidents leaves some room for accident and coincidence.1 But the inclusion of military and nuclear sites in the list leads us to believe that some degree of “wag the dog” is going on. The prime suspect would be Israel and/or the United States during the window of opportunity afforded by the Trump administration, which looks to be closing over the next six months. Trump likely has a high tolerance for conflict with Iran ahead of the election. Even though Americans are war-weary, they will rally to the president’s defense if Iran is seen as the instigator, as opinion polls showed they did in September 2019 and January of this year. Iran is avoiding goading Trump so far but if it suffers too great of damage from sabotage then it may be forced to react. The dynamic is unstable and hence an oil price spike cannot be ruled out. Table 3Wag The Dog Scenario Playing Out In Iran
A Tech Bubble Amid A Tech War (GeoRisk Update)
A Tech Bubble Amid A Tech War (GeoRisk Update)
Chart 12Oil Supply Risks Stem From Iran/Iraq, But COVID Threat To Demand Persists
Oil Supply Risks Stem From Iran/Iraq, But COVID Threat To Demand Persists
Oil Supply Risks Stem From Iran/Iraq, But COVID Threat To Demand Persists
Oil markets have the capacity and the large inventories necessary to absorb supply disruptions caused by a single Iranian incident (Chart 12). Only a chain reaction or major conflict would add to upward pressure. This would also require global demand to stay firm. The threat from COVID-19 suggests that volatility is the only thing one can count on in the near-term. Over the long run we remain bullish crude oil due to the unfettered commitment by world governments to reflation. Bottom Line: The euro rally is fundamentally supported but faces exogenous risks in the short run. We would steer clear of Russian currency and local currency bonds over the US election campaign and aftermath, particularly if Trump’s polling upturn becomes a dead cat bounce. Iran is a “gray swan” geopolitical risk, hiding in plain sight, but its impact on oil markets will be limited unless a major war occurs. Investment Implications The US dollar is at a critical juncture. Our Foreign Exchange Strategist Chester Ntonifor argues that if the DXY index breaks beneath the 93-94 then the greenback has entered a structural bear market. The most recent close was 93.45 and it has hovered below 94 since Monday. Failure to pass US stimulus quickly could result in a dollar bounce along with other safe havens. Over the short run, investors should be prepared for this and other negative surprises relating to the US election and significant geopolitical risks, especially involving China, the tech war, and the Taiwan Strait. Over the long run, investors should position for more fiscal support to combine with ultra-easy monetary policy for as far as the eye can see. The Federal Reserve is not even “thinking about thinking about raising rates.” This combination ultimately entails rising commodity prices, a weakening dollar, and international equity outperformance relative to both US equities and government bonds. Matt Gertken Vice President Geopolitical Strategy mattg@bcaresearch.com Footnotes 1 See Raz Zimmt, "When it comes to Iran, not everything that goes boom in the night is sabotage," Atlantic Council, July 30, 2020. Section II: Appendix : GeoRisk Indicator China
China: GeoRisk Indicator
China: GeoRisk Indicator
Russia
Russia: GeoRisk Indicator
Russia: GeoRisk Indicator
UK
UK: GeoRisk Indicator
UK: GeoRisk Indicator
Germany
Germany: GeoRisk Indicator
Germany: GeoRisk Indicator
France
France: GeoRisk Indicator
France: GeoRisk Indicator
Italy
Italy: GeoRisk Indicator
Italy: GeoRisk Indicator
Canada
Canada: GeoRisk Indicator
Canada: GeoRisk Indicator
Spain
Spain: GeoRisk Indicator
Spain: GeoRisk Indicator
Taiwan
Taiwan: GeoRisk Indicator
Taiwan: GeoRisk Indicator
Korea
Korea: GeoRisk Indicator
Korea: GeoRisk Indicator
Turkey
Turkey: GeoRisk Indicator
Turkey: GeoRisk Indicator
Brazil
Brazil: GeoRisk Indicator
Brazil: GeoRisk Indicator
Section III: Geopolitical Calendar
Highlights The EU’s €750 billion fiscal package, along with another round of US stimulus likely exceeding $1 trillion, will support global oil demand. On the supply side, OPEC 2.0’s production discipline likely holds, and US shale output will remain depressed. These fundamentals, along with a weakening USD, will continue to support Brent prices, which are up 129% from their lows in April. China’s record-setting crude-oil-import surge during the COVID-19 pandemic – averaging 12.7mm b/d in 1H20, up 28.5% y/y – is at risk of slowing in 2H20, as domestic storage fills. Supply-side risks are acute: Massive OPEC 2.0 spare capacity – which could exceed 6mm b/d into 2021 – will tempt producers eager to monetize these to boost revenue. On the demand side, COVID-19 infection rates are surging in the US. Progress on vaccines notwithstanding, politically intolerable public-health risks in big consuming markets could usher in demand-crushing lockdowns again. Economic policy uncertainty remains elevated globally, but the balance of risks continues to favor the upside: We expect 2H20 Brent prices to average $44/bbl, and 2021 prices to average $65/bbl, unchanged from last month’s forecast. Feature We are marginally lifting our forecast of average 2020 Brent prices to $43/bbl, with 2H20 expected to average $44/bbl, and $65/bbl next year, unchanged from June. Marginal improvements to preliminary supply and demand estimates earlier in the COVID-19 pandemic support the thesis that fundamentals will not derail the massive oil-price rally that lifted Brent 129% from its April 21 low of $19.30/bbl. A weakening US dollar, and the expectation this trend will continue, also is supportive to commodities in general, oil in particular. As a result, we are marginally lifting our forecast of average 2020 Brent prices to $43/bbl, with 2H20 expected to average $44/bbl, and $65/bbl next year, unchanged from June (Chart of the Week). The three principal oil-market data providers – the US EIA, IEA and OPEC – raised demand estimates at the margin for 1H20, particularly for 2Q20, the nadir for global oil consumption. The EIA’s estimate for 2Q20 demand shows an upward revision of 550k b/d from last month’s estimate. On the supply side, the EIA estimates global output fell -8.1mm b/d in 2Q20, a -300k b/d downward revision vs. its estimate from last month (Chart 2). Chart of the WeekOil Price Rally Remains Intact
Oil Price Rally Remains Intact
Oil Price Rally Remains Intact
Chart 2OPEC 2.0, US Shale Production Cuts Deepen
OPEC 2.0, US Shale Production Cuts Deepen
OPEC 2.0, US Shale Production Cuts Deepen
We continue to expect the drawdown in storage levels to flatten – and then backwardate – the forward curves for Brent and WTI. After accounting for this better-than-expected fundamental performance, we now expect global supply to fall 5.9mm b/d in 2020 and to increase 4.2mm b/d in 2021. On the demand side, we now expect 2020 demand to fall 8.1mm b/d vs. 8.9mm b/d last month, and for 2021 demand to rise 7.8mm b/d vs 8.5mm b/d in June (Chart 3). This will keep the physical deficit we’ve been forecasting for 2H20 and 2021 in place, allowing OECD storage to fall to 3,026mm barrels by year-end and to 2,766mm barrels by the end of next year (Chart 4). Chart 3Supply-Demand Balances Tighten ...
Supply-Demand Balances Tighten ...
Supply-Demand Balances Tighten ...
Chart 4... Leading To Deeper Storage Draws ...
... Leading To Deeper Storage Draws ...
... Leading To Deeper Storage Draws ...
We continue to expect the drawdown in storage levels to flatten – and then backwardate – the forward curves for Brent and WTI (Chart 5). One caveat, though: We are watching floating storage levels closely, particularly in Asia: The current structure of the Brent forwards does not support carrying floating inventory, but it’s been slow moving lower (Chart 6). This could reflect a slowing in China’s crude-oil import surge, which hit record levels in May and June. Chart 5... And More Backwardation In Brent And WTI Forwards ...
... And More Backwardation In Brent And WTI Forwards ...
... And More Backwardation In Brent And WTI Forwards ...
Chart 6… Even As Floating Storage In Asia Remains Elevated
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
China’s Crude-Import Binge Ending? There is a non-trivial risk China’s crude-buying binge during the COVID-19 pandemic, which supported prices during the brief Saudi-Russian market-share war in March and the collapse in global demand in 2Q20, may have run its course (Chart 7).1 At the depths of the global pandemic in 2Q20, China’s year-on-year (y/y) crude imports surged 15%. According to Reuters, China’s crude oil imports totaled 12.9mm b/d in June, a record level for the second month in a row.2 Much of this was converted to refined products – chiefly gasoline and diesel fuel – as China’s demand recovered from the global pandemic (Chart 8). China’s 208 refineries can process 22.3mm b/d of crude, according to the Baker Institute at Rice University in Houston.3 Refinery runs in June were estimated at just over 14mm b/d by Reuters. Chart 7China's Crude Import Binge Stalls
China's Crude Import Binge Stalls
China's Crude Import Binge Stalls
Chart 8China's Refiners Lift Runs As Imports Surge
China's Refiners Lift Runs As Imports Surge
China's Refiners Lift Runs As Imports Surge
A reduction in China’s crude imports would force barrels to either remain on the water until refiners find a need for it, or demand for refined products increases in the region. China imports its oil into 59 port facilities, which can process ~ 16mm b/d. Storage is comprised of 74 crude oil facilities holding ~ 706mm barrels, and 213 refined-product facilities with capacity to hold ~ 357mm barrels of products (Map 1). By Reuters’s count, ~ 2mm b/d of crude went into storage in the January-May period, while close to 2.8mm b/d was stored in June. Official storage data is a state secret, so it is not possible to determine whether China’s crude and product storage is full. However, if crude oil imports remain subdued – and floating storage in Asia remains elevated – we would surmise the Chinese storage facilities are close to full. Additionally, any sharp and sustained increase in refined product exports would indicate storage is brimming. Map 1Baker Institute China Oil Map
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
A reduction in China’s crude imports would force barrels to either remain on the water until refiners find a need for it, or demand for refined products increases in the region. We expect the latter condition to obtain, in line with our expectation of a global recovery in demand, even though China remains out of sync with the rest of the world presently. China was the first state to confront the pandemic and first to emerge out of it; its trading partners still are in various stages of recovery (Chart 9). Chart 9China's Demand Recovery Likely Will Be Choppy
China's Demand Recovery Likely Will Be Choppy
China's Demand Recovery Likely Will Be Choppy
OPEC 2.0’s Remains Sensitive To Demand Fluctuations OPEC 2.0’s leaders – the Kingdom of Saudi Arabia (KSA) and Russia – also managed to secure additional “compensation” cuts from members that have missed their targets in previous months. The asynchronous recovery in global oil demand poses a unique problem for OPEC 2.0 this year and next. OPEC 2.0 will be easing production curtailments to 7.7mm b/d beginning in August from 9.6mm b/d in July, on the advice of its Joint Ministerial Monitoring Committee (JMMC). This is a decision that will be closely monitored, amid rising concern over the speed of demand recovery in the US and EM economies, due to mounting COVID-19 cases (Chart 10). The surge in US infections relative to its trading partners is of particular concern, given the size of US oil demand (Chart 11). In 2H20, we expect US demand will account for close to 20% of global demand, much the same level it was prior to the pandemic (Table 1). Chart 10COVID-19 Infections Surge In The US
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
Chart 11US COVID-19 Infections Are A Risk To Global Commodity Demand
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
Table 1BCA Global Oil Supply - Demand Balances (MMb/d, Base Case Balances)
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
OPEC 2.0’s leaders – the Kingdom of Saudi Arabia (KSA) and Russia – also managed to secure additional “compensation” cuts from members that have missed their targets in previous months, bringing the actual increase in production closer to 1-1.5mm b/d. Together, Iraq, Nigeria, Kazakhstan, and Angola, over-produced versus their May and June targets by ~ 760k b/d. In our balances estimates, as is our normal practice, we haircut these estimates and use a lower compliance level that those stated in the official OPEC 2.0 agreement. In the case of these producers, we assume they will compensate for ~ 70% of their overproduction, bringing the adjusted cuts to ~ 8.3mm b/d. This should be sufficient to maintain the current supply deficit in oil markets that continues to support Brent prices above $40/bbl. However, the reliance on laggards’ extra cuts to balance markets adds instability. There is a lot of supply on the sidelines from the OPEC 2.0 cuts and the restart of the Neutral Zone shared by Saudi Arabia and Kuwait. The JMMC is continually assessing supply-demand balances and remains focused on making sure the totality of the cuts does not fall on a small group of countries. It reiterated its position that “achieving 100% conformity from all participating Countries is not only fair, but vital for the ongoing rebalancing efforts and to help deliver long term oil market stability.” In June, OPEC 2.0’s overall compliance was 107% – mostly reflecting over-compliance from KSA, the UAE, and Kuwait.4 There is a lot of supply on the sidelines from the OPEC 2.0 cuts and the restart of the Neutral Zone shared by Saudi Arabia and Kuwait. The US EIA estimates that within the original OPEC cartel spare capacity will average close to 6mm b/d this year, the first time since 2002 that it has exceeded 5mm b/d. On top of this, there’s the looming downside risk of a new Iran deal if Democrats win the White House and Congress in US elections in November, and a possible restart of Libyan exports this year. Watch The DUCs In The US With WTI prices averaging $41/bbl so far in July, we continue to expect part of previously shut-in US production to come back on line in July, August and September. Nonetheless, the negative effect of the multi-year low rig count will be felt heavily in 4Q20 and 1Q21 and will push production lower. The rig count appears to be bottoming but is not expected to increase meaningfully until WTI prices move closer to $45-50/bbl. On average it takes somewhere between 9-12 months for the signal from higher prices to result in new oil production flowing to market in the US. As the rig count moves back up in 2021, its effect on production will be apparent only in late-2021. However, the massive inventory of drilled-but-uncompleted (DUC) wells in the main US tight-oil basins will provide a source of cheaper new supply, if WTI prices remain above $40/bbl. DUCs are 30-40% cheaper to complete compared to drilling a new well from start. We expect DUCs completion will begin adding to US crude output in 1Q21, and that this will continue to be a source of supply beyond 2021. Bottom line: Global economic policy uncertainty remains elevated, albeit off its recent highs (Chart 12). We expect this uncertainty to continue to wane, which will allow the USD to continue to weaken. This will spur global oil demand, and will augment the fiscal and monetary stimulus to the COVID-19 pandemic undertaken globally. Chart 12Global Policy Uncertainty Remains High, Which Could Support USD Demand
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
Nonetheless, the global recovery remains out of sync, which complicates OPEC 2.0’s production management, and markets’ estimation of supply-demand balances. Uneven success in combating the pandemic keeps the risk of lockdowns on the radar in the US. Policy is driving oil production at present, and, given the temptation to monetize spare capacity, the supply side remains a risk to prices. We continue to see upside risk dominating the evolution of prices and are maintaining our expectation Brent prices will average $44/bbl in 2H20 – lifting the overall 2020 average to $43/bbl – and $65/bbl next year. Our expectation WTI will trade $2-$4/bbl below Brent also remains intact. Robert P. Ryan Chief Commodity & Energy Strategist rryan@bcaresearch.com Hugo Bélanger Associate Editor Commodity & Energy Strategy HugoB@bcaresearch.com Fernando Crupi Research Associate Commodity & Energy Strategy FernandoC@bcaresearch.com Commodities Round-Up Energy: Overweight Canadian oil production averaged 4.6mm b/d in 2Q20 vs. 5.5mm b/d in 2Q19, based on EIA estimates. The lack of demand from US refiners – crude imports from Canada fell by 420k b/d y/y during the quarter – and close to maxed-out local storage facilities pushed prices below cash costs, forcing the shut-ins of more than 1mm b/d of crude production. Canadian energy companies started releasing their 2Q20 earnings this week and analysts expect the results to be one of the worst ever recorded, reflecting the extent of the pain producers felt during the COVID-19 shock. Base Metals: Neutral High-grade iron ore prices (65% Fe) were trading above $120/MT this week, on the back of forward guidance from the commodity’s top exporter, Brazilian miner Vale, which suggested exports will be lower than had been previously estimated this year, according to Fastmarkets MB, a sister service of BCA Research. This is in line with an Australian Department of Industry, Science, Energy and Resources analysis in June, which noted, “The COVID-19 pandemic appears to have affected both sides of the iron ore market: demand disruptions have run up against supply problems localised in Brazil, where COVID-19-related lockdowns have derailed efforts to recover from shutdowns in the wake of the Brumadinho tailings dam collapse” (Chart 13). Precious Metals: Neutral Our long silver position is up 17.5% since it was recommended July 2. We are placing a stop-loss on the position at $21/oz, our earlier target, given the metal was trading ~ $22/oz as we went to press. The factors supporting gold prices – chiefly low real rates in the US, a weakening dollar and global monetary accommodation, also support silver prices. However, silver also will benefit from the recovery in industrial activity and incomes we anticipate in the wake of global fiscal and monetary stimulus, which will drive demand for consumer products (Chart 14). Ags/Softs: Underweight Lumber prices have more than doubled since April lows. The uncertainty brought by the COVID-19 health emergency altered the perception of future housing demand and, by extension, lumber demand, to the point that mills responded by substantially decreasing capacity utilization rates. However, in the wake of global monetary and fiscal stimulus, housing weathered the storm better than expected. Furthermore, a surge in DIY projects from individuals working from home at a time of reduced supply contributed to the current state of market shortage. Chart 13Lower Supply Supports Iron Ore Prices
Lower Supply Supports Iron Ore Prices
Lower Supply Supports Iron Ore Prices
Chart 14Silver Favored Over Gold
Silver Favored Over Gold
Silver Favored Over Gold
Footnotes 1 In our reckoning, a non-trivial risk is something greater than Russian roulette odds – i.e., a 1-in-6 chance of an event occuring. Re the ever-so-brief Saudi-Russian market-share war, please see KSA, Russia Will Be Forced To Quit Market-Share War, which we published March 19, 2020. It is available at ces.bcaresearch.com. 2 Please see COLUMN-China's record crude oil storage flies under the radar: Russell published by reuters.com July 20, 2020. 3 The Baker Institute’s Open-Source Mapping of China's Oil Infrastructure was last updated in March 2020. The map is “a beta version and is likely missing some pieces of existing infrastructure. The challenge of China’s geographic expanse — it is roughly the same area as the U.S. Lower 48 — is compounded by a lack of transparency on the part of China’s government,” according to the Baker Institute. 4 In our supply-side estimates, we used IEA estimates of cuts for June this month. This doesn’t change the overall estimate of cuts from our earlier analysis; however, it slightly changes how the 9.7mm b/d was split between OPEC 2.0 members. the official eased cuts are 7.7mm b/d from 9.7mm b/d in May-June-July, but it actually is closer to 8.3mm b/d accounting for the compensation from the countries mentioned above. Investment Views and Themes Recommendations Strategic Recommendations Tactical Trades Trade Recommendation Performance In 2020 Q2
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
Commodity Prices and Plays Reference Table Trades Closed in 2020 Summary of Closed Trades
Balance Of Oil-Price Risk Remains To The Upside
Balance Of Oil-Price Risk Remains To The Upside
Highlights Q2/2020 Performance Breakdown: Our recommended model bond portfolio outperformed the custom benchmark by +11bps during the second quarter of the year. Winners & Losers: The government bond side of the portfolio outperformed by +8bps, led by overweights in the US (+4bps), Canada (+4bps) and Italy (+3bps). Spread product generated a small outperformance (+3bps), with overweights in US investment grade (+43bps) offsetting underweights in emerging market debt (-35bps). Scenario Analysis For The Next Six Months: We are sticking close to benchmark on overall duration and spread product exposure, focusing more on relative value between countries and sectors to generate outperformance amid economic uncertainties caused by the growing spread of COVID-19. We continue favoring markets where there is direct buying from central banks, but we are also increasing our recommended exposure to EM USD-denominated debt versus US investment grade corporates. Feature The first half of 2020 has been one of rapid market moves and regime shifts for global fixed income markets. In the first quarter, developed market government debt provided the best returns as bond yields plunged with central banks racing to support collapsing economies through rate cuts and liquidity injections. In Q2, corporate credit delivered the top returns, as economies started to emerge from the COVID-19 lockdowns and, more importantly, the Fed and other major central banks delivered direct support to frozen credit markets through asset purchases. Now, even as an increasing number of global growth indicators are tracing out a "V"-shaped recovery, new cases of COVID-19 are surging though the southern US and major emerging economies like Brazil and India. This raises new challenges for investors for the second half of 2020. A second wave of the coronavirus could jeopardize the nascent global economic recovery, even after the massive easing of monetary and fiscal policies, at a time when valuations on many risk assets appear stretched. In this report, we review the performance of the BCA Research Global Fixed Income Strategy (GFIS) model bond portfolio during the second quarter of 2020. We also present our recommended portfolio positioning for the next six months. Given the lingering uncertainties from the renewed spread of COVID-19, we continue to take a more measured approach in our portfolio allocations. That means focusing more on relative value between countries and sectors while staying closer to benchmark on overall global duration and spread product exposure versus government bonds (Table 1). Table 1GFIS Model Bond Portfolio Recommended Positioning For The Next Six Months
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
As a reminder to existing readers (and to new clients), the model portfolio is a part of our service that complements the usual macro analysis of global fixed income markets. The portfolio is how we communicate our opinion on the relative attractiveness between government bond and spread product sectors. We do this by applying actual percentage weightings to each of our recommendations within a fully invested hypothetical bond portfolio. Q2/2020 Model Portfolio Performance Breakdown: Slight Outperformance For Both Sovereigns And Credits Chart 1Q2/2020 Performance: Modest Gains From Relative Positioning
Q2/2020 Performance: Modest Gains From Relative Positioning
Q2/2020 Performance: Modest Gains From Relative Positioning
The total return for the GFIS model portfolio (hedged into US dollars) in the second quarter was 3.22%, modestly outperforming the custom benchmark index by +11bps (Chart 1).1 In terms of the specific breakdown between the government bond and spread product allocations in our model portfolio, the former generated +8bps of outperformance versus our custom benchmark index while the latter outperformed by +3bps. That government bond return includes the small gain (+2bps) from inflation-linked bonds, which we added as a new asset class in our model portfolio framework on June 23.2 In a world of very low bond yields (Table 2), our preference for the higher-yielding government bond markets in the US, Canada, the UK and Italy was the main source of outperformance, delivering a combined excess return of +13bps (including inflation-linked bonds). Our underweight in Japan delivered a surprising positive excess return of +4bps as longer-dated JGB yields – which do not fall under the Bank of Japan’s yield curve control policy – rose during the quarter. Underweights in the low-yielding core euro area countries of Germany and France were a drag on the portfolio (a combined -10bps), particularly the latter where longer-maturity French bonds enjoyed a very strong rally in Q2. Table 2GFIS Model Bond Portfolio Q2/2020 Overall Return Attribution
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
In spread product, our overweights in US investment grade corporates (+43bps), UK investment grade corporates (+7bps) and US commercial MBS (+5bps) squeezed out a combined small gain versus underweights in emerging markets (EM) USD-denominated credit (-35bps), euro area high-yield (-8bps) and lower-rated US high-yield (-6bps). In a world of very low bond yields (Table 2), our preference for the higher-yielding government bond markets in the US, Canada, the UK and Italy was the main source of outperformance. That modest outperformance of the model bond portfolio versus the benchmark is in line with our cautious recommended stance on what are always the largest drivers of the portfolio returns: overall duration exposure and the relative allocation between government debt and spread product. We have stuck close to benchmark exposures on both, eschewing big directional bets on bond yields or credit spreads while focusing more on relative opportunities between countries and sectors. This conservative approach is how we are approaching what we have dubbed “The Battle of 2020” between the opposing forces of coronavirus contagion (which is bullish for government bonds and bearish for credit) and policy reflation (vice versa).3 The bar charts showing the total and relative returns for each individual government bond market and spread product sector are presented in Charts 2 & 3. Chart 2GFIS Model Bond Portfolio Q2/2020 Government Bond Performance Attribution
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
Chart 3GFIS Model Bond Portfolio Q2/2020 Spread Product Performance Attribution By Sector
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
The most significant movers were: Biggest Outperformers Overweight US investment grade industrials (+28bps) Overweight US investment grade financials (+12bps) Overweight UK investment grade corporates (+7bps) Overweight US CMBS (+5bps) Underweight Japanese government bonds with maturity greater than 10 years (+5 bps) Biggest Underperformers Underweight EM USD denominated corporates (-24bps) Underweight EM USD denominated sovereigns (-10bps) Underweight EUR high-yield corporates (-8bps) Underweight French government bonds with maturity greater than 10 years (-5bps) Underweight US B-rated high-yield corporates (-4bps) Chart 4 presents the ranked benchmark index returns of the individual countries and spread product sectors in the GFIS model bond portfolio for Q2/2020. Returns are hedged into US dollars (we do not take active currency risk in this portfolio) and adjusted to reflect duration differences between each country/sector and the overall custom benchmark index for the model portfolio. We have also color coded the bars in each chart to reflect our recommended investment stance for each market during Q2/2020 (red for underweight, dark green for overweight, gray for neutral).4 Ideally, we would look to see more green bars on the left side of the chart where market returns are highest, and more red bars on the right side of the chart were returns are lowest. Chart 4Ranking The Winners & Losers From The GFIS Model Bond Portfolio In Q2/2020
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
The top performing sectors in our model bond portfolio universe in Q2 were all spread product: EM USD-denominated sovereign (+12.9% in USD-hedged terms, duration-matched to the custom model portfolio benchmark index), EM USD-denominated corporate debt (+12.6%), UK investment grade corporates (+11.3%), US investment grade corporates (+10.9%), and high-yield corporates in the euro area (+6.7%) and US (+5.6%). The top performing sectors in our model bond portfolio universe in Q2 were all spread product. During the quarter, we maintained relative exposures to those sectors within an overall small above-benchmark allocation to global spread product – overweight US and UK investment grade versus underweight emerging market credit, neutral overall US high-yield (favoring Ba-rated debt) versus underweight euro area high-yield. Those allocations were motivated by our theme of “buying what the central banks are buying”, like the Fed purchasing US investment grade corporates. Importantly, we had limited exposure to the worst performing sectors during Q2: underweight government bonds in Japan (index return of -0.47% in USD-hedged, duration-matched terms) and Germany (+0.47%), a neutral allocation to Australian sovereign debt (-0.07%) and an underweight in US Agency MBS (+0.20%). The latter two positions came after we downgraded US MBS to underweight in early April and cut our long-held overweight in Australia to neutral in mid-May. Bottom Line: Our model bond portfolio modestly outperformed its benchmark index in the second quarter of the year by +11bps – a positive result driven by our relative positioning that favored higher yielding government debt and spread product sectors directly supported by central bank purchases. Future Drivers Of Portfolio Returns Chart 5Overall Portfolio Allocation: Slightly Overweight Credit Vs Governments
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
Typically, in these quarterly performance reviews of our model bond portfolio, we make return forecasts for the portfolio based off scenario analysis and quantitative predictions of various fixed income asset classes. However, the current environment is unprecedented because of the COVID-19 outbreak. Not only is there now elevated economic uncertainty, but central banks are running extreme monetary policies in response - including direct intervention in markets through purchases of both government bonds and spread product. Thus, we are reluctant to rely on historical model coefficients and correlations to estimate expected fixed income returns. Instead, we will focus on the logic behind our current model portfolio allocations and the expected contribution to overall portfolio performance over the next six months. At the moment, the main factors that will drive the performance of the model bond portfolio over the next six months are the following: Our recommended overweight stance on relatively higher-yielding sovereigns like the US, Canada and Italy versus low-yielders like Germany, France and Japan; Our allocation to inflation-linked bonds out of nominal government debt in the US, Italy and Canada; Our recommended overweight stance on spread product backstopped by central bank purchases - US investment grade corporates, US Agency CMBS, US Ba-rated high-yield, and UK investment grade corporates; Our recommended underweight stance on riskier spread product - euro area high-yield, US B-rated and Caa-rated high-yield, and EM USD-denominated corporates and sovereigns. The portfolio currently has a small aggregate overweight allocation to spread product relative to government bonds, equal to three percentage points (Chart 5). We feel that is an appropriate allocation to credit versus sovereigns in an environment that is still highly uncertain concerning the spread of COVID-19 and how global growth will evolve over the next 6-12 months. This also leaves room to increase the spread product allocation should the news on the virus and the global economy take a turn for the better. We also remain neutral on overall portfolio duration exposure. Our Global Duration Indicator, which contains growth data like our global leading economic indicator and the global ZEW expectations index, has rebounded sharply and is signaling that bond yields should bottom out in the second half of 2020 (Chart 6). A rise in yields will take longer to develop, however, with virtually all major central banks signaling that policy rates will stay near 0% for an extended period. Chart 6Our Global Duration Indicator Says Bond Yields Will Bottom Out In H2/2020
Our Global Duration Indicator Says Bond Yields Will Bottom Out In H2/2020
Our Global Duration Indicator Says Bond Yields Will Bottom Out In H2/2020
Chart 7Within Governments, Overweight Inflation-Linked Bonds Vs. Nominals
Within Governments, Overweight Inflation-Linked Bonds Vs. Nominals
Within Governments, Overweight Inflation-Linked Bonds Vs. Nominals
The recent moves in developed market government bonds are interesting in terms of the underlying drivers of yields – real yields and inflation expectations. Longer-maturity inflation breakevens – the spread between the yields of nominal and inflation-linked government debt – have drifted higher since late March after major central banks began rapidly easing monetary conditions. At the same time, the actual yields on inflation-linked bonds, i.e. real yields, have moved lower and largely offset the gains in inflation breakevens (Chart 7). Nominal yields have been stuck in very narrow ranges as a result. We do not see that dynamic changing, at least in the near term. Inflation breakevens are too low on our models across all developed markets, and are likely to continue inching higher in the coming months on the back of a pickup in global growth and rising energy prices. At the same time, central banks will be staying on hold for longer while continuing to buy large quantities of nominal bonds, helping push real yields lower. Given these opposing forces on nominal government bond yields, we think it is far too soon to contemplate reducing overall duration – even with equity and credit markets having rallied sharply off the lows and global economic indicators rebounding. Thus, we are maintaining an overall duration exposure close to benchmark in the model portfolio (Chart 8). At the same time, we are playing for wider breakevens and lower real bond yields through allocations to markets where our models indicate better value in being long breakevens: US TIPS, Italian inflation-linked BTPs, and Canadian Real Return Bonds. Within the government bond side of the model bond portfolio, we continue to recommend focusing more on country allocation to generate outperformance. That means concentrating exposures in relatively higher yielding markets like the US, Canada and Italy while maintaining underweights in low-yielding core Europe and Japan. Turning to spread product allocations, we continue to recommend focusing more on policymaker responses to the COVID-19 recession, and its uncertain recovery, rather than the downturn itself. The now double-digit year-over-year growth in global central bank balance sheets - which has led global high-yield and investment grade excess returns by one year in the years after the Global Financial Crisis (Chart 9) – is pointing to additional global corporate bond market outperformance versus governments over the next 6-12 months. Chart 8Overall Portfolio Duration: Close To Benchmark
Overall Portfolio Duration: Close To Benchmark
Overall Portfolio Duration: Close To Benchmark
In other words, we are focusing on global QE rather than global recession, while maintaining a modest recommended overall weighting on global spread product. That allocation could be larger, but we suggest picking the lowest hanging fruit in the credit universe rather than going for the highest beta credit markets like Caa-rated US high-yield that have already seen significant spread compression relative to higher-rated US junk bonds (bottom panel). Chart 9Global QE Supporting Credit Markets
Global QE Supporting Credit Markets
Global QE Supporting Credit Markets
Chart 10Overall Credit Allocation: Keep Buying What The Central Banks Are Buying
Overall Credit Allocation: Keep Buying What The Central Banks Are Buying
Overall Credit Allocation: Keep Buying What The Central Banks Are Buying
We continue to focus our recommended spread product allocations on the parts of global credit markets where central banks are directly buying. We continue to focus our recommended spread product allocations on the parts of global credit markets where central banks are directly buying (Chart 10). In the US, that means overweighting US investment grade corporate bonds (particularly those with maturities of less than five years), US Ba-rated high-yield that the Fed can hold in its corporate bond buying program, US Agency CMBS that is also supported by Fed programs, and UK investment grade corporate bonds that the Bank of England is buying. We also put Italian government bonds into this category, with the ECB buying greater amounts of BTPs as part of its COVID-19 monetary support efforts. What about emerging market debt? We have expressed reservations in recent months about upgrading EM USD-denominated sovereign and corporate debt, even within our portfolio theme of being “selectively opportunistic” about recommended spread product allocations. We have long felt that the time to buy those markets would be when the US dollar had clearly peaked and global growth had clearly bottomed. The latter condition now appears to be in place, and the strong upward momentum in the US dollar is starting to weaken. This forces us to reconsider our stance on EM debt in the model portfolio. Even after the powerful Q2 rally in EM corporate and sovereign debt, EM credit spreads still look relatively attractive using one of our favorite credit valuation metrics – the percentile rankings of 12-month breakeven spreads. Those breakeven spreads are calculated, as the amount of spread widening that would make the return of EM credit equal to duration-matched US Treasuries over a 12-month horizon. We then compare those spreads to their own history to determine how attractive current spread levels are now on a “spread volatility adjusted” basis. Current 12-month breakeven spreads for EM USD-denominated sovereigns and corporates are in the upper quartile of their own history. This compares favorably to other spread products in our model bond portfolio universe, particularly US investment grade corporates where the 12-month breakevens are now just below the long-run median (Chart 11). Chart 11A Comparison Of Credit Sectors Using 12-Month Breakeven Spreads
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
The current Bloomberg Barclays EM corporate benchmark index option-adjusted spread (OAS) is around 300bps above that of the US investment grade corporate index OAS. That spread still has room to compress further if global growth continues to rebound and the US dollar softens versus EM currencies. Leading growth indicators like the China credit impulse, which has picked up sharply as Chinese authorities have ramped up economic stimulus measures, are now back to levels last seen in 2016 when EM credit strongly outperformed US investment grade corporates (Chart 12). Chart 12Upgrade EM Credit Versus US Investment Grade
Upgrade EM Credit Versus US Investment Grade
Upgrade EM Credit Versus US Investment Grade
Chart 13Overall Portfolio Yield: Close To Benchmark
Overall Portfolio Yield: Close To Benchmark
Overall Portfolio Yield: Close To Benchmark
This week we are upgrading our weighting on EM USD-denominated corporates and sovereigns to neutral, from underweight, in our model bond portfolio. Although we acknowledge that the EM story has been made more complicated by the rapid spread of COVID-19 through the major EM economies, an underweight stance – particularly versus US investment grade credit – is increasingly unwarranted. Therefore, this week we are upgrading our weighting on EM USD-denominated corporates and sovereigns to neutral, from underweight, in our model bond portfolio (see the updated table on pages 17-18). That new allocation will be “funded” by reducing our overweight in US investment grade corporates. Model bond portfolio yield and tracking error considerations Importantly, the selective global government bond and credit allocations we have just outlined do not come at a cost in terms of forgone yield. The portfolio yield after our upgrade of EM debt will be slightly above that of the custom benchmark index (Chart 13), indicating no “negative carry” even when avoiding parts of the US and euro area high-yield markets. Chart 14Overall Portfolio Risk: Moderate
Overall Portfolio Risk: Moderate
Overall Portfolio Risk: Moderate
Finally, turning to the risk budget of the model portfolio, we are aiming for a “moderate” overall tracking error, or the gap between the portfolio’s volatility and that of the benchmark index. The portfolio volatility has fallen dramatically from the surge seen during the global market rout in March, moving lower alongside realized market volatility. The tracking error now sits at 64bps, well below our self-imposed limit of 100bps and within the 50-70bps range we are targeting as a “moderate” level of overall portfolio risk (Chart 14). Bottom Line: We are sticking close to benchmark on overall duration and spread product exposure, focusing more on relative value between countries and sectors to generate outperformance amid economic uncertainties caused by the growing spread of COVID-19. We continue favoring markets where there is direct buying from central banks. We are also increasing our recommended exposure on EM USD-denominated debt to neutral, funded by a reduced allocation to US investment grade corporates where valuations are less attractive. Robert Robis, CFA Chief Fixed Income Strategist rrobis@bcaresearch.com Ray Park, CFA Research Analyst ray@bcaresearch.com Footnotes 1 The GFIS model bond portfolio custom benchmark index is the Bloomberg Barclays Global Aggregate Index, but with allocations to global high-yield corporate debt replacing very high quality spread product (i.e. AA-rated). We believe this to be more indicative of the typical internal benchmark used by global multi-sector fixed income managers. 2 Please see BCA Global Fixed Income Strategy Weekly Report, "How To Play The Revival Of Global Inflation Expectations'", dated June 23 2020, available at gfis.bcaresearch.com. 3 Please see BCA Global Fixed Income Strategy Weekly Report, "Contagion Vs. Reflation: The Battle Of 2020 Rages On", dated June 30, 2020, available at gfis.bcaresearch.com. 4 Note that sectors where we made changes to our recommended weightings during Q2/2020 will have multiple colors in the respective bars in Chart 4. Recommendations The GFIS Recommended Portfolio Vs. The Custom Benchmark Index
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
GFIS Model Bond Portfolio Q2/2020 Performance Review & Current Allocations: Selective Optimism
Duration Regional Allocation Spread Product Tactical Trades Yields & Returns Global Bond Yields Historical Returns
Highlights Energy Bond Model: This report presents models for both investment grade and high-yield Energy bond excess returns. The models are based on overall corporate bond index spreads and the oil price. They can be used to generate Energy bond excess return forecasts for investment horizons up to 12 months. IG Energy Bonds: Our model suggests that investment grade Energy bond excess returns will be strong during the next 12 months under likely economic scenarios. We recommend an overweight allocation to investment grade Energy bonds. HY Energy Bonds: Our models imply positive excess return outcomes for high-yield Energy bonds, but we remain concerned about near-term default risk for lower-rated issuers. We advise a cautious (neutral) allocation for now. Part 2 of this Special Report, to be published next week, will dig further into the high-yield Energy index on an issuer-by-issuer basis. Feature Table 1Energy Bond Excess Return* Scenarios (12-Month Investment Horizon)
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
During the past couple of months we’ve published several reports that take more detailed looks at specific industry groups within both the investment grade and high-yield corporate bond markets. So far, we’ve published reports on: Banks1 Healthcare & Pharmaceuticals2 Technology3 This week and next week, we continue our series with a deep dive into Energy bonds that is split between two Special Reports. This week’s report develops a model for Energy bond excess returns based on overall corporate bond index excess returns and the oil price. In next week’s report, we look more deeply into the characteristics of the investment grade and high-yield Energy indexes. We also consider the outlooks for the five sub-categories of Energy debt: Independent, Integrated, Oil Field Services, Refining and Midstream. A Model Of Energy Bond Excess Returns A good starting point for modeling the excess returns of any corporate bond sector is to combine the sector’s Duration-Times-Spread (DTS) ratio with the excess returns of the overall corporate bond index.4 Please note that “excess returns” refers to returns relative to a duration-matched position in Treasury securities. The DTS-only model explains 86% of the variance in monthly investment grade Energy excess returns. Considering only a sector’s DTS ratio, we can define the following model for monthly investment grade Energy excess returns: EXSENRG = (DTSENRG / DTSCORP) * EXSCORP Where: EXSENRG = Monthly investment grade Energy excess returns versus duration-matched Treasuries (DTSENRG / DTSCORP) = The investment grade Energy sector’s DTS ratio EXSCORP = Monthly investment grade corporate index excess returns versus duration-matched Treasuries For example, the current DTS for the investment grade Energy sector is 18. The DTS for the overall corporate index is 12. This means that the DTS ratio for the Energy sector is 18/12 = 1.5. According to our simple model, we would expect Energy sector excess returns to be 1.5 times corporate index excess returns in any given month. It turns out that our simple model performs quite well. Chart 1 shows monthly investment grade Energy sector excess returns versus our model’s prediction. Our sample period spans from 1997 to the present. Specifically, we find that our model explains 86% of the variance in monthly investment grade Energy excess returns. Chart 1Investment Grade Energy Monthly Excess Returns*: DTS-Only Model**
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The simple (DTS-only) model’s performance is admirable, but we can do slightly better if we also incorporate the oil price. Chart 2 shows a statistically significant relationship between the residual from the DTS-only model and the monthly change in the Brent crude oil price. Chart 2Residual From DTS-Only Model* Versus Oil Price
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
Combining the models shown in Charts 1 and 2, we get a model for investment grade Energy monthly excess returns based on both corporate index excess returns and the oil price: EXSENRG = (DTSENRG / DTSCORP) * EXSCORP + (376.84 * ∆ ln Oil) – 1.0587 Where excess returns are measured in basis points and (∆ ln Oil) = the monthly change in the natural logarithm of the Brent crude oil price. Chart 3 shows the historical performance of this complete model. Note that the model now explains 91% of the historical variance of investment grade Energy excess returns, 5% more than the initial DTS-only model. Chart 3Investment Grade Energy Monthly Excess Returns*: Complete Model (DTS & Oil)**
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
Robustness Checks We performed the same analysis for 3-month, 6-month and 12-month excess returns and found very consistent results (Table 2). The oil price adds significant explanatory power to the model in each case, but the bulk of variation in investment grade Energy excess returns is determined by trends in the overall corporate index spread. Table 2Investment Grade Energy Excess Returns*: Model Results Using Different Return Frequencies (1997 - Present)
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
We also find consistent results when looking at high-yield Energy returns (Table 3). Once again, the bulk of excess return variation is explained by multiplying the DTS ratio and the benchmark index’s excess returns. The oil price also adds a statistically significant amount of extra explanatory power. Table 3High-Yield Energy Excess Returns*: Model Results Using Different Return Frequencies (1997 - Present)
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
One final observation is that oil explains a greater proportion of the variation in Energy sector excess returns if we limit our sample period to the past few years. Specifically, we re-ran the monthly iterations of both the investment grade and high-yield models from July 2014 to present. We found that the DTS component of the model explains the same amount of excess return variation as it did for the full sample. However, we also found that the oil price has a much greater impact if the sample is limited to the past six years (Table 4). Table 41-Month Excess Return* Models: Full Sample (1997 - Present) Versus Recent Sample (2014 - Present)
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
The Outlook For Energy Bonds Part 1: A Model Of Energy Bond Excess Returns
Energy Excess Return Scenarios Finally, using our 12-month excess return models for investment grade and high-yield Energy, we can project likely outcomes for Energy excess returns versus Treasuries for the next 12 months. All we have to do is assume different outcomes for the overall benchmark index spread (either the investment grade or High-Yield index, depending on the model) and the oil price.5 The results of this scenario analysis are shown in Table 1. Starting with investment grade Energy, we see that all scenarios where the investment grade corporate index spread tightens lead to positive Energy excess returns. This is true even in a scenario where the oil price falls by $20 during the next year. Our model also suggests that a $10-$20 increase in the oil price during the next 12 months will keep Energy excess returns positive, even in a modest “risk off” scenario where the corporate index spread widens by 25 bps. All scenarios where the investment grade corporate index spread tightens lead to positive Energy excess returns. The story is similar in high-yield, though returns are much more variable. For example, high-yield Energy is projected to lose money relative to Treasuries in a scenario where the junk index spread tightens 50 bps and the oil price falls by $20. There are no scenarios where benchmark index spread tightening coincides with negative Energy excess returns in the investment grade model. Chart 4Watch For Falling Inventories
Watch For Falling Inventories
Watch For Falling Inventories
In terms of likely scenarios for the next 12 months, we anticipate further spread tightening for corporate bonds rated Ba & above. But we also view B-rated and lower spreads as too tight given the default outlook for the next 12 months and the fact that these lower-rated issuers usually can’t access the Fed’s emergency lending facilities.6 With that in mind, we would confidently bet on investment grade index spread tightening during the next 12 months, but can envision high-yield spread widening driven by the lower credit tiers. On oil, our Commodity & Energy Strategy service forecasts an average Brent crude oil price of $65 in 2021, a sizeable increase relative to the current price of $43.27.7 Our strategists expect a significant supply contraction in the second quarter of this year that will cause the oil market to enter a physical deficit in the second half of 2020. Investors can look for falling storage levels in the coming months to confirm whether that forecast is playing out (Chart 4). Escalating tensions between the US and Iran pose an additional near-term upside risk to oil prices. This risk increased during the past few weeks as a string of mysterious explosions struck several Iranian military and economic facilities.8 However, with major oil producers now operating significantly below capacity, any net impact on oil prices from a supply disruption in the Persian Gulf would likely be short-lived. Investment Conclusions All in all, our bullish outlook for both investment grade corporate bond spreads and the oil price makes us inclined to overweight investment grade Energy bonds on a 12-month horizon. Within high-yield, our model also suggests that we should have a bullish bias toward Energy, but we remain concerned about default risk for lower-rated (B & below) Energy issuers during the next few months. We will dig into the high-yield Energy index on an issuer-by-issuer basis in Part 2 of this report, to be published next week. For now, we advise a more cautious stance toward high-yield Energy. Ryan Swift US Bond Strategist rswift@bcaresearch.com Footnotes 1 Please see US Bond Strategy Weekly Report, “Negative Oil, The Zero Lower Bound And The Fisher Equation”, dated April 28, 2020, available at usbs.bcaresearch.com 2 Please see US Bond Strategy Weekly Report, “Assessing Healthcare & Pharma Bonds In A Pandemic”, dated June 9, 2020, available at usbs.bcaresearch.com 3 Please see US Bond Strategy Weekly Report, “Take A Look At High-Yield Technology Bonds”, dated June 23, 2020, available at usbs.bcaresearch.com 4 Duration-Times-Spread (DTS) is a simple measure that is highly correlated with excess return volatility for corporate bonds. The DTS ratio is the ratio of a sector’s DTS to that of the benchmark index. It can be thought of like the beta of a stock. A DTS ratio above 1.0 signals that the sector is cyclical (or “high beta”), a DTS ratio below 1.0 signals that the sector is defensive or (“low beta”). For more details on the DTS measure please see: Arik Ben Dor, Lev Dynkin, Jay Hyman, Patrick Houweling, Erik van Leeuwen & Olaf Penninga, “DTS (Duration-Times-Spread)”, Journal of Portfolio Management 33(2), January 2007. 5 We translate changes in benchmark index spread into 12-month excess returns using the formula: excess return = option-adjusted spread – (duration * change in option-adjusted spread) 6 Please see US Bond Strategy Weekly Report, “No Holding Back”, dated June 16, 2020, available at usbs.bcaresearch.com 7 Please see Commodity & Energy Strategy Weekly Report, “Low Vol, High Uncertainty Keeps Oil-Price Rally On Tenterhooks”, dated June 18, 2020, available at ces.bcaresearch.com 8 Please see Geopolitical Strategy Special Alert, “Cyber-Rattling In The Middle East”, dated July 10, 2020, available at gps.bcaresearch.com
Highlights Our quantitative US election model suggests Trump has a 44% chance of re-election. This presents a risk to our formal subjective view that he has a 35% chance. We are sticking with our subjective odds for now, as Trump is beset with a reviving COVID-19 outbreak, a recession, social unrest, and execution risks for the next round of fiscal stimulus. But we may increase his chances in August if his circumstances improve. In the worst case, the devastated economy will lead to a landslide in which Trump even loses Iowa. But peak political polarization makes that unlikely and suggests that the race will tighten from here. Uncertainty and volatility will rise from here through November and possibly beyond. Feature The BCA Geopolitical Strategy presidential election model was first introduced to our readers in November 2019 in order to predict and quantify the Electoral College vote outcome of the 2020 US presidential election. The election model is a state-by-state model that uses both economic and political variables in order to predict the probability of the incumbent party winning the Electoral College votes in each of the 50 states. We favored predicting the Electoral College vote over the popular vote since the winner of the presidential election is determined by the Electoral College. There have been five cases in history where the popular vote did not determine the outcome and two in recent history (George W. Bush in 2000 and Donald Trump in 2016). The college imposes a significant (and deliberate) constraint on popularity and mass movements. Our sample size includes nine elections over the period 1984-2016, across 50 states, netting 450 observations. One of our four explanatory variables, the Federal Reserve Bank of Philadelphia State Leading Index, was suspended indefinitely amid the COVID-19 crisis. Hence we needed a replacement variable that could capture a similar impact on the predicted outcome, and one that was readily available on a state-by-state basis. Enter our replacement variable: 1. The Federal Reserve Bank of Philadelphia State Coincident Index. The state leading index in our previous election model was an estimate of the six-month growth rate in the state coincident index. Therefore the state coincident index is the natural replacement variable as it will essentially proxy the state leading index, albeit without the forward-looking element. The coincident index for each state combines four of the state’s indicators to summarize current economic conditions in a single statistic. The four indicators are nonfarm payroll employment; average hours worked in manufacturing by production workers; the unemployment rate; and wage and salary disbursements plus proprietors' income deflated by the consumer price index (US city average). We applied several transformations to the data to obtain meaningful results in the modeling process. Transformations included three-month, six-month, and twelve-month changes in the state coincident indexes. Ultimately we decided to use the three-month change of the state coincident index in our updated Version 2 (V2) election model. As before, we took a weighted average of the three-month change of all the monthly state coincident indexes in the presidential term preceding the election. Later months are weighted heavier than earlier months. A significant difference from the first version of our model is that, unlike the state leading indexes, the state coincident indexes do not have leading properties that give a forward-looking “view” on what the economic environment will look like going into Q1 of the post-election year. We acknowledge that past, current, and future economic conditions are likely to weigh on voters’ minds when casting their vote, but we also note the difficulties in accurately weighting one expectation more than another. We assume that prevailing economic conditions matter most to voters (as people’s assessment of their current situation inevitably affects their future expectations, and vice versa), and this bolsters our rationale in using a 3-month change of the state coincident index. Our final calculation of three-month changes to the state coincident indexes occurs in September of the election year, given that most voters make their decision at least one month in advance of the election, as we have previously shown. The October data release will arrive too late in November for inclusion in the election forecast anyway. Our remaining explanatory variables for V2 of our model update: 2. The incumbent party’s margin of victory in the previous presidential election in each state. Same as our original model. 3. A “time for change” variable – a categorical variable indicating whether the incumbent party has been in the White House for one or more terms. Same as our original model. 4. The range of the incumbent president’s job approval rating. Our original model used the level of approval. Our V2 model excludes the average approval level of the incumbent president in July of the election year as it was found to be statistically insignificant at widely accepted significance levels (1%, 5% and 10%) when estimated with the state coincident index (as opposed to the state leading index), no matter the transformation applied to that index. This does not mean we exclude Trump’s approval data from our modeling process. Instead, we include the range of the incumbent president’s job approval rating. This was the only transformed variation in presidential job approval rating data that showed statistical significance when combined with the variables above. For V2 of our model, the range is computed as the maximum monthly average of various job approval polls less the minimum monthly average of such polls throughout a president’s term. Despite Trump’s job approval being low relative to previous presidents, he has maintained consistency. Hence the range of Trump’s job approval is fairly tight relative to previous presidents and should not be ignored in affecting the election outcome. Upside Risk To Trump’s Re-Election Odds? Chart 1 below depicts our revised prediction of November’s presidential election. Chart 1Trump Is Slated To Lose Re-election With 259 Electoral College Votes
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
As it stands, Trump is slated to lose the election with 259 Electoral College votes (45 less than his 2016 victory). This is just ten votes shy of our previous prediction in March this year, but several swing states that were narrowly in Trump’s camp in March are now far less likely to go his way. Our previous prediction, which of course did not account for COVID-19’s economic shock, had Trump tied with the presumptive democrat nominee at the time. But the latest results still point to a tight race come November. Our updated quantitative model gives Trump a 44% chance of winning. The collapse of the state economies is overwhelming Trump’s re-election bid. Poor economic conditions hardly ever favor a sitting president up for reelection. But note that the three-month change in the state indexes will be the first to register the economic rebound this summer and fall (should it continue). This would improve Trump’s probability of victory. Under our V2 model, New Hampshire, Pennsylvania, and Wisconsin are no longer toss-up states. Rather, Florida is the only toss-up state, with a 52% probability of staying with the incumbent party. Minor negative changes to the state indexes could result in more toss-up states, even throwing traditionally red states into toss-up territory. States that are expected to turn from Republican in 2016 to Democratic in 2020 are Michigan, Pennsylvania, and Wisconsin – the entire “Blue Wall” that delivered Trump his surprise victory four years ago. On the whole, the model gives Trump a 44% chance of retaining the White House. Do we uncritically accept these results? No. As with all of our analysis, we provide a qualitative judgment in addition to our quantitative indicators and models. In general the findings make sense. We agree that Florida, Arizona, and North Carolina remain in Trump’s camp at present, if narrowly. Our qualitative estimate, since March, has given Trump a 35% chance of winning, in keeping with the historical win rate of incumbent parties when recessions occurred during the election year (Table 1). Online political betting markets have recently converged to this view (Chart 2). Thus our quant model suggests that the risk to our view, and the new consensus, is a Trump comeback. Table 1Recessions Weigh On Incumbent Win Rates
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
Chart 2A Democratic Victory Is The New Consensus
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
We will not formally upgrade Trump’s odds until we are convinced that his freefall has been reversed. We are concerned about the rise in deaths from COVID-19 in key swing states, including Florida, Arizona, and Texas and the potential for another major economic setback. We also would want to see Trump get the next round of fiscal stimulus passed in order to turn more optimistic on his chances. Therefore we will stick to our 35% odds and will reassess in late August when the Republican and Democratic party conventions are held. Model Performs Well In Back Tests Our V2 model performs well during in-sample back testing when comparing actual Electoral College vote outcomes for each election since 1984. On balance, V2 correctly predicts all election outcomes over our sample period (Chart 3). Chart 3Our Model Predicts All Election Outcomes In Our Sample …
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
The same can be said of V2 during out-of-sample back testing, correctly predicting election outcomes from 2000 - 2016 (Chart 4). Chart 4… And During Out-Of-Sample Back Testing
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
As mentioned, we cannot ignore the impact that Trump’s job approval may have on his re-election. Since no other transformation of Trump’s approval data test significantly in our V2 model, what if we transform the state coincident index by a longer frequency? What would the predicted outcome be? Trump would maintain his current level of predicted Electoral College votes of 259. The major change is that the state of Florida would no longer be a toss-up. Instead New Hampshire would become the only toss-up, with Trump having only a 45% chance of winning it. Transforming the state coincident index by a longer frequency is more favorable for Trump. Florida moves out of toss-up territory and New Hampshire moves in. But no change in Electoral College votes are recorded as neither party flips a state in this scenario. What if we were to exclude Trump’s approval range as a variable entirely – how would Trump fare? This “barebones” or economic-focused variation is the least favorable for Trump, allocating just 180 Electoral College votes. Arizona and – surprisingly – Iowa would become toss-up states with probabilities of Trump victory at 47% and 49%, respectively (Table 2). Table 2The Economy Is Weighing Down On Trump’s Odds Of Re-Election
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
It should be noted that models including Trump’s approval range as an explanatory variable exhibited higher over/under estimation during the sample period when compared to models that excluded Trump’s approval range entirely. Despite larger errors in some election years, these models also predicted two elections with almost no error (1988 and 2004), and one election with zero error (2008). These results suggest that Trump’s job approval should not be ignored. Peak Polarization Chart 5Peak Polarization
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
An interesting takeaway from our V1 model was that it produced a new measure of American political polarization, a phenomenon widely observed by scholars. The model showed that many states would be won or lost with extreme certainty (0% or 100%), i.e. that they are not even competitive. We take this finding as an indication of polarization, in which group loyalty overcomes all other variables. Results of in-sample predictions from our V2 model corroborate this finding (Chart 5). They are virtually the same as in V1, except that they show a higher degree of polarization in 2020, which now matches the previous peak in 2012. This is intuitive and corroborates other evidence that US polarization is reaching or exceeding recent highs. Polarization may or may not rise higher in the next election cycle, but we suspect that we are witnessing peak polarization from a historical point of view. Over five to ten years, polarization should fall. Generational change in the US will produce more domestic policy consensus, while geopolitical struggle with China will unify the nation against a common enemy for the first time since the cold war. Expect uncertainty and market volatility ahead of the election and in the aftermath. Thus the US may continue to export political instability to the rest of the world in the near-term. But eventually it will find an internal equilibrium and external sources of instability will become the bigger geopolitical risk for investors. So What? Our V2 US presidential election model predicts Trump will lose the November reelection, only amassing 259 Electoral College votes. The model implies that Trump has an overall probability of 44% in taking the White House. Florida is the only toss-up state in the latest prediction, with a 52% probability of staying with the incumbent party. Florida accounts for 29 Electoral College votes. Should the states of Michigan, Pennsylvania, and Wisconsin switch back to Republican, Trump would score an additional 46 Electoral College votes. But if Trump has Florida then he only needs to win one of these three states to win the election. Should the states of Michigan, Pennsylvania, and Wisconsin switch back to Republican, Trump would score an additional 46 Electoral College votes which would hand him the win in November. Conversely, the Democrats are expected to win in November with 279 Electoral College votes. As it stands, the Democrats have a 55% chance of victory. For now, we will maintain our subjective 35/65 odds. But the model shows that the risk is to the upside for Trump and that the race will likely tighten from here. We will likely increase his odds in late August if the renewed virus outbreak in Sunbelt swing states gets under control and Congress passes another major stimulus bill by August 10, as we expect. These findings reinforce our long-held view that the election will come down to narrow margins in the swing states. The deluge of bad news for Trump makes it less likely that the election will be narrow. But the fundamentals, as captured in our V2 model, suggest that Florida, at minimum, will still be an extremely tight race. Thus we would reiterate that this election may feature contested results, vote recounts, and Supreme Court interventions, like the year 2000. Investors should prepare for uncertainty and market volatility to rise between now and November 3, and possibly beyond. Guy Russell Research Analyst GuyR@bcaresearch.com Statistical Appendix Some clients may be curious about how our V2 election model differs from our V1 model. We discuss the salient differences herein. Chart A1Our Updated Model Offers Reduced Error
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
1. The modeling method remains the same Firstly, our V1 model was based off a probit regression, where the dependent variable is stated as 1 = incumbent party wins all Electoral College votes in a given state, or 0 = incumbent party does not win any Electoral College votes in this state.1 The probit regression allows us to assign probabilities of the incumbent party winning each state, given that the inverse of the probability is modeled as a linear combination of the model’s predictors. This modeling technique is maintained in V2 of our model. 2. Variable replacement In V1 of our model, we relied on the Federal Reserve Bank of Philadelphia State Leading Index as an economic variable. In V2, due to the state leading index being discontinued, we adopt the Federal Reserve Bank of Philadelphia State Coincident Index. V1 of our model also used the average approval level of the incumbent president in July of the election year. Since this transformation of job approval data proved statistically insignificant, we tested and included the range of the incumbent president’s job approval rating. The approval range variable showed statistical significance at 5% and 10% levels. 3. Predicted error Assessing the predicted error by each election outcome shows that our V2 model, on balance, trends well with our V1 model (Chart A1), and offers reduced error, on balance, post the 2000 election. Our V2 model also has a lower absolute error when compared to our V1 model. Note, and as we pointed out earlier, our V2 model suffers from some large errors mid-way through the sample period but V2’s predictability improves notably over time. Comparing the error of our V2 model with alternative models that we highlighted in Table A1 also shows just how closely they trend together, despite offering some differing results pertaining to Electoral College votes and toss-up states. Table A1Variations Of Our Model Offer Similar Classified Predicted Outcomes
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
Our V2 model has a lower predicted error in the 2012 and 2016 election than an alternative V2 in which the state coincident indicator is transformed by a six-month change (Chart A2). This warrants our decision in choosing V2 as our preferred model. Chart A2Three-Month Change In State Coincident Indicators Reduces Model Error
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
Chart A3Including Trump’s Approval Data Improves The Model’s Robustness
Updating Our Quantitative Election Model
Updating Our Quantitative Election Model
Our V2 model versus the “barebones” V2 model (which excludes the approval range variable and thus can be seen as a purely economic model) has higher predicted error in the elections of 1992 and 1996, but lower error from 2000 onwards (Chart A3). Whilst our V2 model does have a higher absolute error in contrast to the “barebones” model, we believe minimizing a model’s error while still including an element of Trump’s approval data provides us with the most robust election model. Model Diagnostics Regression diagnostics for V2 of our model and other variations that we highlighted in Table A1 above, but do not use, show that our updated model correctly classifies predicted outcomes at a rate of 88.21%. The “barebones” model classifies predicted outcomes marginally better, but we take confidence in the fact that predicted error in our V2 model trends lower as we move further into our sample period, and in the lead up to the 2020 election, bolstering our preferred model choice. The V2 model, if we apply a six-month change to the coincident indicator, classifies predicted outcomes the lowest at 87.43%. Summary Our V2 model shows areas of improved robustness when compared to V1. We keep to the same modeling technique as we did in V1 of our model, a probit regression. We replaced the Federal Reserve Bank of Philadelphia State Leading Index with the Coincident Index and through statistical testing. We opted to drop the average approval level of the incumbent president in July and replace it with the range of the incumbent president’s job approval rating. With mostly lower error for election outcomes from 2000-2016, and lower absolute error and higher correctly classified outcomes, V2 is an adequate model in predicting the upcoming presidential election. Footnotes 1 Two states, Maine and Nebraska, do not have a “winner takes all” distribution of Electoral College votes. Instead they give two Electoral College votes to the winner of the statewide election, plus additional Electoral College votes to the winner within each congressional district. Maine has two congressional districts, Nebraska has three. Nebraska’s second district voted for President Obama in 2008 while Maine’s second district voted for President Trump in 2016.
Highlights Butterflies & Yield Curve Models: With bond market volatility now back to the subdued levels seen prior to the COVID-19 market turbulence earlier in 2020, it is a good time to update our global yield curve valuation models to look for attractive butterfly trade ideas. Valuations: The models generally indicate that flattener trades offer better value across all countries. Our medium-term strategic bias, however, is towards steeper yield curves with policy rates on hold and depressed global inflation expectations likely to continue drifting higher over the latter half of the year. Yield Curve Trades: We are initiating the first set of yield curve trades within our rebooted Tactical Trade Overlay: going long a 7-year bullet vs. a 5-year/10-year barbell in the US; long a 2-year/30-year barbell vs. a 5-year bullet in France; long a 5-year/30-year barbell vs. a 10-year bullet in Italy; and long a 3-year/20-year barbell vs. a 10-year bullet in the UK. Feature In a Special Report published back in February of this year, we dusted off our model-based framework to find value in trades focused on the shape of government bond yield curves.1 By comparing the market-implied short-term interest rate expectations extracted from our curve models to our own macro views, we are able to come up with actionable buy or sell signals across the yield curve in nine developed markets: the US, Germany, France, Italy, Spain, the UK, Japan, Canada, and Australia. Table 1Most Attractive Butterfly Trades
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
Given the extreme market turbulence around the time we published that report, as the full scope of the COVID-19 pandemic was becoming evident, we chose not to recommend any curve trades from our models until global volatility subsided to acceptable levels. The vigorous action from central banks to manipulate bond yields since then - quantitative easing, aggressive forward guidance, outright yield curve control in Japan and Australia, and other unconventional monetary policy measures - introduced another layer of difficulty in implementing successful curve trades using models estimated in more normal times. With global bond market volatility now back down to pre-COVID levels, we feel that the time is right to use our curve models to help identify opportunities. Specifically, we are implementing new recommended yield curve trades in the US, France, Italy, and the UK. Table 1 shows the most attractive butterfly trades across all the markets covered in this analysis. Note that three of the four trades we are initiating include very long-dated bonds where yields are less susceptible to direct central bank influence. The only exception is our US long 7-year bullet vs. 5-year/10-year barbell trade, the reasoning for which we outline later in this report. Three of the four trades we are initiating include very long-dated bonds where yields are less susceptible to direct central bank influence. The only exception is our US long 7-year bullet vs. 5-year/10-year barbell trade. Before delving into our analysis proper, a quick note: in the interest of brevity, we will limit ourselves to a simple explanation of butterfly strategies and our yield curve models in this report. For those interested in a deeper explanation of the curve modeling framework, please refer to our February 25, 2020 Special Report. A Recap On Butterflies And An Update On Our Yield Curve Models A butterfly fixed income strategy involves two main components: a barbell (a weighted combination of long-term and short-term bonds) and a bullet (a medium-term bond that sits within the yield curve segment selected in the barbell). To implement a butterfly strategy, a bond investor would go long (short) the barbell while simultaneously going short (long) the bullet. By weighting the combination of the long- and short-term bonds in the butterfly such that the weighted sum of their duration equals the duration of the medium-term bond in the bullet, we achieve immunization to parallel shifts in the yield curve. At the same time, due to the relatively higher duration of the longer-term component of the butterfly, we get exposure to specific changes in the slope of the yield curve. In general, the barbell will outperform the bullet in a flattening yield curve environment, and vice-versa. Chart of the WeekButterfly Spreads & Yield Curves
Butterfly Spreads & Yield Curves
Butterfly Spreads & Yield Curves
To actually decide how, and on which parts of the yield curve, to implement our butterfly strategies, we make use of our yield curve models. These models rely on the positive relationship typically observed between the butterfly spread and the slope of the yield curve. When the curve steepens, the butterfly spread widens, and vice-versa (Chart of the Week). This has to do with mean reversion: as the curve steepens, it increases the odds that the curve will flatten in the future since it cannot steepen indefinitely. Consequently, investors will ask for greater compensation to enter a curve steepener trade when the curve is already steepening. As a result, we can create simplified models of the yield curve by regressing any butterfly spread on its corresponding curve slope. Deviations from these fair value models indicate which butterfly strategies are cheap or expensive. However, the model output does not by itself constitute a buy or sell signal and must be integrated with our macro view on the slope of the curve. For example, a butterfly strategy with an expensive bullet implies that there is already a certain amount of steepening discounted in the yield curve. If the yield curve flattens, or even steepens by an amount smaller than what is discounted in the yield curve over the investment horizon, the barbell will outperform, as expected. However, if we see more steepening than is discounted in the yield curve, the bullet will outperform, even though it was already at relatively expensive levels. Therefore, it is crucial to integrate our macro view on how much the curve will steepen or flatten over the investment horizon into our curve trade selection framework. In recent reports, we have emphasized our high-conviction view that global inflation expectations will drift higher in the coming months, driven by reflationary fiscal and monetary policy and a continued rebound in global commodity prices (most notably, oil).2 However, a rise in inflation expectations does not necessarily translate to a “one-to-one” rise in nominal yields if it is offset by a compression in real bond yields. To disentangle this, we look at the 3-year rolling betas of nominal 10-year government bond yields to the corresponding 10-year breakeven inflation rates using inflation-linked bonds (Chart 2). The data suggest a currently weaker relationship between inflation expectations and nominal yields, with all betas well below their post-crisis maxima. Our overall macro bias is towards a global steepening in yield curves, but given our strong belief in a rebound in inflation expectations, we would be more willing to enter steepener trades in higher-beta regions such as Germany, Canada, the US, and Australia where it is more likely that a rise in inflation expectations will translate to higher nominal yields. Conversely, we are less hesitant to enter flatteners in the lower-beta regions such as the UK, France, Italy, and Japan. Chart 2The Link Between Nominal Yields And Inflation Expectations Has Weakened
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
When we said earlier this year that we were “dusting off” our yield curve models, that was not just a figure of speech. The models date back originally to 2002, meaning that they are old enough to vote—perhaps even for a popular rapper. Even though we have been refining and updating it along the way, one of our concerns was that this model was estimated for a pre-crisis sample period before near-zero rates became ubiquitous in developed markets. Our overall macro bias is towards a global steepening in yield curves, but given our strong belief in a rebound in inflation expectations, we would be more willing to enter steepener trades in higher-beta regions such as Germany, Canada, the US, and Australia. To test that the curve relationships within our models are maintained when global central banks are pinning policy rates near 0%, we have re-estimated all the regressions for the post-financial crisis period from 2009 to 2017 when most central banks kept rates near the zero bound. Chart 3 shows the results for the representative 2-year, 5-year and 10-year portions of the yield curve. On the whole, the coefficients are weaker but still positive with the exception of Japan, where many years of zero rates and quantitative easing have caused the 2-year/5-year/10-year butterfly spread to become largely unmoored from the 2-year/10-year slope. Chart 3Looking For Structural Shifts In Our Yield Curve Models
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
Therefore, we still see value in our curve modeling approach, even in the current environment where central banks are likely to be on hold for a period measured in years, not months. Bottom Line: Butterfly strategies are an effective way to position for changes in the slope of the yield curve without exposure to shifts in the curve. Our current strategic bias is to expect steepening of developed market yield curves through rising longer-term inflation expectations, but our global yield curve models indicate better value in most flattening trades. Thus, we need to be extremely selective in recommending trades based on the results of our yield curve models. Yield Curve Models And Trades By Region In the remaining pages of this report, we present the current read-outs from of our yield curve models for each of the major developed markets. More specifically, we provide the deviations from fair value for different combinations of bullets and barbells and highlight the most attractive butterfly strategy. The deviations from fair value shown in Tables 2-10 are standardized to facilitate comparisons between the different butterfly combinations. In addition, for each country we provide a quick assessment of the performance of these butterfly strategies over time by applying a simple mechanical trading rule. Every month, we enter the most attractive butterfly strategy, i.e. the one with the highest absolute standardized deviation from its model fair value. The overall message from the models is that barbells appear attractive relative to bullets across all the countries shown. However, we will only initiate trades in cases where the model output and our macro outlook complement each other. US Looking solely at our model output, US Treasury curve flatteners appear most attractive, with the long 3-year/30-year barbell vs. 5-year bullet trade displaying the greatest deviation from fair value with a residual of -1.55 (Table 2). However, we are inclined to agree with our colleagues at BCA Research US Bond Strategy on how to interpret Treasury curve valuation in the current environment. They argue that even though steepeners in the US are currently expensive, valuations can become even more overstretched with the Fed signaling no rate increases for at least the next two years and the market priced for an extended period of near-zero rates.3 Table 2US: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
Our fundamental bias is towards US Treasury curve steepening, with the Fed locking down the front end of the curve and rising inflation expectations putting upward pressure on longer-term yields. Thus, we are entering into the long 7-year bullet vs. 5/10 barbell trade which has a small but positive model residual of +0.17. That represents a better valuation starting point than the other US butterfly spreads, and is therefore a more efficient and profitable way to position for steepeners becoming even more expensive going forward. As highlighted earlier, nominal yields in the US are also more sensitive to rising inflation expectations—another reason to enter into a curve steepener. The specific securities used to execute this trade, as well as the weights for the barbell component used to the make both legs of the trade duration-equivalent, can be found on Page 27 within our Tactical Trade Overlay table. Nominal yields in the US are also more sensitive to rising inflation expectations—another reason to enter into a curve steepener. The 7-year bullet appears just 1bp cheap according to our model and would only underperform its counterpart given a flattening in the 5-year/10-year Treasury slope greater than 22bps, which we believe is unlikely given the reasons outlined above (Chart 4A). Chart 4AUS 5/7/10 Spread Fair Value Model
US 5/7/10 Spread Fair Value Model
US 5/7/10 Spread Fair Value Model
Chart 4BUS Butterfly Strategy Performance
US Butterfly Strategy Performance
US Butterfly Strategy Performance
Following the mechanical trading rule has delivered steady returns with only a few periods of negative year-over-year returns (Chart 4B). Germany The most attractively valued butterfly combination on the German yield curve is going long the 1-year/30-year barbell and shorting the 5-year bullet, which is almost one standard deviation above its model-implied fair value, with a standardized residual of -0.97 (Table 3). Table 3Germany: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 5-year bullet appears 29bps expensive according to our model and would only outperform its counterpart given a steepening in the 1-year/30-year German curve slope greater than 50bps (Chart 5A). Chart 5AGermany 1/5/30 Spread Fair Value Model
Germany 1/5/30 Spread Fair Value Model
Germany 1/5/30 Spread Fair Value Model
Chart 5BGermany Butterfly Strategy Performance
Germany Butterfly Strategy Performance
Germany Butterfly Strategy Performance
Following the mechanical trading rule has been quite profitable, delivering consistently positive year-over-year returns for all but the initial period of our sample (Chart 5B). France The most attractively valued butterfly combination on the French OAT yield curve is going long the 2-year/30-year barbell and shorting the 5-year bullet (Table 4). This combination is a little less than one standard deviation over its model-implied fair value with a standardized residual of -0.84. Nominal yields in France are also relatively less correlated with inflation expectations, which makes this a prime candidate for a flattener trade. The specific securities used to execute this trade, as well as the weights for the barbell component used to the make both legs of the trade duration-equivalent, can be found on Page 27 within our Tactical Trade Overlay table. Table 4France: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 5-year bullet appears 21bps expensive according to our model and would only outperform its counterpart given a steepening in the 2-year/30-year French curve slope greater than 48bps (Chart 6A). Chart 6AFrance 2/5/30 Spread Fair Value Model
France 2/5/30 Spread Fair Value Model
France 2/5/30 Spread Fair Value Model
Chart 6BFrance Butterfly Strategy Performance
France Butterfly Strategy Performance
France Butterfly Strategy Performance
As with Germany, following the mechanical trading rule in the French OAT market has also been profitable, with only three periods of negative year-over-year returns in our sample period (Chart 6B). Italy And Spain In Italy, the most attractively valued butterfly combination is going long the 5-year/30-year barbell and shorting the 10-year bullet – a combination with a standardized residual of -0.79 (Table 5). In Spain, going long the 3-year/30-year barbell and short the 5-year bullet seems most attractive with a standardized residual of -0.83 (Table 6). Of the two peripheral euro area countries, we are choosing to put on a trade in the relatively larger and more liquid Italian government bond market. As with France, Italian nominal yields also display a relatively low beta to inflation breakevens. The specific securities used to execute this trade, as well as the weights for the barbell component used to the make both legs of the trade duration-equivalent, can be found on Page 27 within our Tactical Trade Overlay table. Table 5Italy: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
Table 6Spain: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
In Italy, the 10-year bullet appears 22bps expensive according to our model and would only outperform its counterpart given a steepening in the 5-year/30-year Italian curve slope greater than 153bps (Chart 7A). Following the mechanical trading rule in Italy has yielded strong excess returns, with only one very short period of negative year-over-year returns in our sample period (Chart 7B). As with Italy, following the mechanical trading rule in Spain has yielded some of the strongest excess returns on a cumulative and year-over-year basis. Chart 7AItaly 5/10/30 Spread Fair Value Model
Italy 5/10/30 Spread Fair Value Model
Italy 5/10/30 Spread Fair Value Model
Chart 7BItaly Butterfly Strategy Performance
Italy Butterfly Strategy Performance
Italy Butterfly Strategy Performance
In Spain, the 5-year bullet appears 14bps expensive according to our model and would only outperform its counterpart given a steepening in the 3-year/30-year Spanish curve slope greater than 47bps (Chart 8A). As with Italy, following the mechanical trading rule in Spain has yielded some of the strongest excess returns on a cumulative and year-over-year basis (Chart 8B). Chart 8ASpain 3/5/30 Spread Fair Value Model
Spain 3/5/30 Spread Fair Value Model
Spain 3/5/30 Spread Fair Value Model
Chart 8BSpain Butterfly Strategy Performance
Spain Butterfly Strategy Performance
Spain Butterfly Strategy Performance
UK On the UK Gilt yield curve, the most attractive butterfly combination is holding a 3-year/20-year barbell versus a 10-year bullet, which currently displays a standardized residual of -1.08 (Table 7). As with France and Italy, not only is this flattener trade attractively valued, the UK is also one of the countries where inflation breakevens are relatively less correlated with nominal yields, making this another excellent candidate for our Tactical Trade Overlay. The specific securities used to execute this trade, as well as the weights for the barbell component used to the make both legs of the trade duration-equivalent, can be found on Page 27. Table 7UK: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 10-year bullet appears 13bps expensive according to our model and would only outperform its counterpart given a steepening in the 3-year/20-year Gilt curve slope greater than 52bps (Chart 9A). Chart 9AUK 3/10/20 Spread Fair Value Model
UK 3/10/20 Spread Fair Value Model
UK 3/10/20 Spread Fair Value Model
Chart 9BUK Butterfly Strategy Performance
UK Butterfly Strategy Performance
UK Butterfly Strategy Performance
Following the mechanical trading rule in the UK has produced consistent returns on a year-over-year basis (Chart 9B). Canada The most attractively valued butterfly combination on the Canadian yield curve is favoring the 5-year/30-year barbell versus the 7-year bullet, which currently displays a standardized residual of -1.41 (Table 8). Table 8Canada: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 7-year bullet appears 7bps expensive according to our model and would only outperform its counterpart given a steepening in the 5-year/30-year Canadian curve slope greater than 42bps (Chart 10A). Chart 10ACanada 5/7/30 Spread Fair Value Model
Canada 5/7/30 Spread Fair Value Model
Canada 5/7/30 Spread Fair Value Model
Chart 10BCanada Butterfly Strategy Performance
Canada Butterfly Strategy Performance
Canada Butterfly Strategy Performance
Following the mechanical trading rule in Canada has historically been a good strategy, but we do note two periods of minor losses in 2013 and 2019 (Chart 10B). Japan The most attractively valued butterfly combination on the JGB yield curve is the 5-year/20-year barbell versus the 7-year bullet, which currently has a standardized residual of -1.03 (Table 9). As we noted earlier, however, valuations in the JGB market are likely distorted due to the Bank of Japan’s long-running programs of quantitative easing, zero policy rates and Yield Curve Control that aims to keep the 10-year JGB yield around 0%. Table 9Japan: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 7-year bullet appears 6bps expensive according to our model and would only outperform its counterpart given a steepening in the 5-year/20-year Japan curve slope greater than 23bps (Chart 11A). Following our mechanical trading rule has produced decent returns, especially given the dormant nature of the JGB market, with only a couple minor periods without positive year-over-year returns. Chart 11AJapan 5/7/20 Spread Fair Value Model
Japan 5/7/20 Spread Fair Value Model
Japan 5/7/20 Spread Fair Value Model
Chart 11BJapan Butterfly Strategy Performance
Japan Butterfly Strategy Performance
Japan Butterfly Strategy Performance
Following our mechanical trading rule has produced decent returns, especially given the dormant nature of the JGB market, with only a couple minor periods without positive year-over-year returns (Chart 11B). Australia The most attractively valued butterfly combination on the Australian yield curve is going long the 2-year/10-year barbell versus the 7-year bullet, displaying a standardized residual of -1.73 (Table 10). Table 10Australia: Butterfly Strategy Valuation: Standardized Residuals
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
The 7-year bullet appears 15bps expensive according to our model and would only outperform its counterpart given a steepening in the 2-year/10-year Australian curve slope greater than 101bps (Chart 12A). Chart 12AAustralia 2/7/10 Spread Fair Value Model
Australia 2/7/10 Spread Fair Value Model
Australia 2/7/10 Spread Fair Value Model
Chart 12BAustralia Butterfly Strategy Performance
Australia Butterfly Strategy Performance
Australia Butterfly Strategy Performance
Compared to the other markets in our analysis, following the mechanical trading rule in Australia has not produced stellar returns (Chart 12B). However, excess returns on a year-over-year basis have been positive barring two periods. Shakti Sharma Research Associate ShaktiS@bcaresearch.com Footnotes 1 Please see BCA Research Global Fixed Income Strategy Special Report, "Global Yield Curve Trades: Follow The Butterflies", dated February 25, 2020, available at gfis.bcaresearch.com. 2 Please see BCA Research Global Fixed Income Strategy Weekly Report, "How To Play The Revival Of Global Inflation Expectations", dated June 23, 2020, available at gfis.bcaresearch.com. 3 Please see BCA Research US Bond Strategy Weekly Report, "Take A Look At High-Yield Technology Bonds", dated June 23, 2020, available at usbs.bcaresearch.com. Recommendations The GFIS Recommended Portfolio Vs. The Custom Benchmark Index
Global Yield Curve Trades: Netting Returns With Butterflies
Global Yield Curve Trades: Netting Returns With Butterflies
Duration Regional Allocation Spread Product Tactical Trades Yields & Returns Global Bond Yields Historical Returns
Highlights Our intermediate-term timing models suggest the US dollar is broadly overvalued. We are maintaining a modest procyclical currency stance (long NOK, GBP and SEK), but also have a portfolio hedge (short USD/JPY). Go long a basket of petrocurrencies versus the euro. Stay short the gold/silver ratio. Feature Our fundamental intermediate-term timing models (FITM) are one of the toolkits we use in currency management. These simple models enable us to time shifts in developed-market currencies using two key variables. Real Interest Rate Differentials: G10 currencies tend to move with their real rate differentials. Under interest rate parity, if one country is expected to have high interest rates versus another, its currency will rise today so as to gradually depreciate in the future and nullify the interest rate advantage. Risk factor: The ebb and flow of risk aversion affects the path of currencies, as it does their domestic capital markets. Procyclical currencies tend to perform better during risk-on periods. We use high-yield spreads and/or commodity prices as a gauge for risk. For all countries, the variables are highly statistically significant and of the expected signs. These models help us understand in which direction fundamentals are pushing the currencies we look at. These models are more useful as timing indicators on a three-to-nine month basis, as their error terms revert to zero quickly. For the most part, our models have worked like a charm. On a risk adjusted-return basis, a dynamic hedging strategy based on our models has outperformed all static hedging strategies for all investors with six different home currencies since 2001.1 The US Dollar Chart I-1USD Is Overvalued By 4.4%
USD Is Overvalued By 4.4%
USD Is Overvalued By 4.4%
The dollar is a sell, according to the model, with a fair value that is falling much faster than the DXY index itself. Going forward, the Federal Reserve’s dovish stance should keep real interest rate differentials moving against the dollar. This will especially be the case if the authorities move to some form of yield curve control. The wildcard is how risk aversion gyrates as we navigate the volatile summer months, especially given rising geopolitical tensions and the potential for an equity market correction (Chart I-1). One of the factors holding up the dollar is that US domestic growth has been relatively strong, with the Citigroup economic surprise index at the highest level since the inception of the series. For the dollar to decline meaningfully, these positive surprises will need to be repeated abroad. On the data front this week, pending home sales rose 44.3% month-on-month in May, following a 21.8% decline the previous month. House prices are rebounding, to the tune of 4%. The ISM manufacturing index broke out to 52.6 in June from 43.1 the prior month. Job gains for the month of June came in at 4.8 million versus expectations of 3.23 million, pushing the unemployment rate down to 11.1%. These strong numbers provide a high hurdle that non-US growth will need to overcome in order for dollar weakness to continue. The Euro Chart I-2EUR/USD Is Undervalued By 3.8%
EUR/USD Is Undervalued By 3.8%
EUR/USD Is Undervalued By 3.8%
The euro is not excessively undervalued versus the US dollar (Chart I-2). Usually, strong buy signals for the euro have been triggered at a discount of about 10% or so relative to the greenback. That said, the euro can still bounce towards 1.16, or about 3%-4% higher, to bring it back to fair value. The biggest catalyst for the euro remains that interest rate differentials with the US are quite wide and can continue to mean revert. The Treasury-bund spread peaked at 2.8%, and has since lost around 1.7%. Yet, a gap of 100 basis points remains wide by historical standards. On the data front, the CPI numbers from the euro area this week were quite instructive. German inflation came in at +0.8% versus a decline of -0.3% in Spain. In a general sense, inflation in Germany has been outperforming that in the periphery for a few months now, which is a sea-change from the historical trend in eurozone inflation, where both the core and periphery have seen CPI tied at the hip. If rising competitiveness in the periphery is a key driver, then the fair value of the Spanish “peseta” is rapidly catching up to that of the German “Deutsche mark,” which is positive for the euro. The Yen Chart I-3USD/JPY Is Overvalued By 10.3%
USD/JPY Is Overvalued By 10.3%
USD/JPY Is Overvalued By 10.3%
The yen’s fair value has benefited tremendously from the plunge in global bond yields, making rock-bottom Japanese rates relatively attractive from a momentum standpoint (Chart I-3). This has pushed the yen to undervalued levels, supporting our tactically short USD/JPY position. The data out of Japan this week suggest that deflationary forces remain quite strong, which will continue to boost real rates and support the yen. The jobs-to-applicants ratio, a key barometer of labor market health, plunged to 1.20 in May from a cycle high of 1.63. Industrial production fell 25.9% year-on-year in May, the worst since the financial crisis. Meanwhile, the second quarter all-important Tankan survey suggests small businesses will continue to bear the brunt of the economic slowdown. With most of the increase in the Bank of Japan’s balance sheet coming from USD swaps with the Fed rather than asset purchases, it suggests little ammunition or appetite for more stimulus. Fiscal policy remains the wild card that could help lift domestic demand. The British Pound Chart I-4GBP/USD Is Undervalued By 5.9%
GBP/USD Is Undervalued By 5.9%
GBP/USD Is Undervalued By 5.9%
Our model shows the pound as only slightly undervalued, putting our long cable position at risk. The drop in UK real rates since the Brexit referendum has prevented our model from flagging the pound as being much cheaper. Given the potential for added volatility this summer, we are looking to book modest profits on long cable (Chart I-4). Data out of the UK remains grim. Mortgage approvals fell to 9.3K in May, well below expectations. Consumer credit is falling much faster than during the depths of the financial crisis, suggesting all the BoE’s liquidity measures are still not filtering down to certain pockets of the economy. Meanwhile, the trend in the trade balance suggests that the pound has not yet started to reflate the economy. The Canadian Dollar Chart I-5USD/CAD Is Overvalued By 8.1%
USD/CAD Is Overvalued By 8.1%
USD/CAD Is Overvalued By 8.1%
The Canadian dollar is undervalued by about 8% (Chart I-5). Going forward, movements in the Canadian dollar will be largely dictated by interest rate differentials and crude oil prices, which remain supportive for now. We are going long a petrocurrency basket today, one that includes the Canadian dollar. Canadian data have been slowly improving, with housing starts up 20.2% month-on-month in May and existing home sales up 56.9% month-on-month. House prices have also remained resilient. More importantly, foreign investors have used the plunge in oil prices to deploy some fresh capital into Canadian assets. International security transactions in April stood at C$49 billion, the highest on record, and will likely continue to improve as oil prices recover. The Swiss Franc Chart I-6USD/CHF Is Undervalued By 20.6%
USD/CHF Is Undervalued By 20.6%
USD/CHF Is Undervalued By 20.6%
Our models suggest the Swiss franc is tactically at risk (Chart I-6). The main reason is that the franc has remained strong, despite the pickup in risk sentiment since March. Even if strength in the franc is sniffing market turbulence ahead, the yen remains a better and cheaper hedge. The Swiss National Bank continues to intervene in the foreign exchange market, but this week’s data shows that growth in sight deposits is rolling over. This is happening at a time when the economy remains weak. The June PMI came in at 41.9, well below expectations. Deflation has returned to Switzerland, with the CPI print for June at -1.3%, in line with the May number. While this is boosting real rates, the strength in the franc is an unnecessary headache for the SNB, especially against the euro. The Australian Dollar Chart I-7AUD/USD Is Undervalued By 7.3%
AUD/USD Is Undervalued By 7.3%
AUD/USD Is Undervalued By 7.3%
Despite the 20% rally in the Aussie dollar since March, it still remains 7%-8% cheap, according to our FITM (Chart I-7). Typical reflation indicators such as commodity prices and industrial share prices are showing nascent upturns. This suggests that so far, policy stimulus in China has been sufficient to lift commodity demand. Meanwhile, 10-year Aussie government bonds sport a positive spread vis-à-vis 10-year Treasurys. Recent data in Australia have been holding up. The private sector is slowly releveraging, the CBA manufacturing PMI went to 51.2 in June, and the trade balance continues to sport a healthy surplus, at A$8 billion for the month of May. Meanwhile, LNG is a long-term winner from China’s shift away from coal and will continue to benefit Australian terms of trade. We are currently in an LNG glut due to Covid-19, but should electricity generation in China, Japan, and other Asean countries recover to pre-crisis peaks, this will ease the glut. The New Zealand Dollar Chart I-8NZD/USD Is Overvalued By 4.9%
NZD/USD Is Overvalued By 4.9%
NZD/USD Is Overvalued By 4.9%
Unlike the AUD, our FITM for the NZD is in expensive territory. This favors long positions in AUD/NZD (Chart I-8). The New Zealand economy will certainly benefit from having put Covid-19 mostly behind it. Both the ANZ business confidence and activity outlook indices continue to rebound strongly from their lows, with the final print for June released this week. However, the hit to tourism will still impact national income. Meanwhile, the adjustment to housing, especially given the ban to foreign purchases, will continue to constrain domestic spending, relative to its antipodean neighbor. In terms of trading, long CAD/NZD and AUD/NZD remain attractive positions. The Norwegian Krone Chart I-9USD/NOK Is Overvalued By 16.9%
USD/NOK Is Overvalued By 16.9%
USD/NOK Is Overvalued By 16.9%
Our fundamental model for the Norwegian krone shows it as squarely undervalued. This favors long NOK positions, which we have implemented via multiple crosses in our bulletins (Chart I-9). The Norwegian economy remains closely tied to oil, and the negative oil print in April probably marked a structural bottom in prices. With inflation near the central bank’s target and our expectation for oil prices to grind higher, the Norwegian currency will likely fare better than a lot of its G10 peers. In terms of data, the unemployment rate ticked higher in April, but at 4.8%, it remains much lower than other developed economies. Our bet is that once the global economy stabilizes, the Norges Bank might find itself ahead of the pack, in any hiking cycle. The Swedish Krona Chart I-10USD/SEK Is Overvalued By 10.6%
USD/SEK Is Overvalued By 10.6%
USD/SEK Is Overvalued By 10.6%
Like its Scandinavian counterpart, the Swedish krona is also quite cheap and is one of our favorite longs at the moment (Chart I-10). Meanwhile, since the Fed extended its USD swap lines, SEK has lagged the bounce in AUD, NZD, and NOK, suggesting some measure of catch up is due. The export-driven Swedish economy was hit hard by Covid-19, despite no widespread lockdowns being implemented. As such, the Riksbank expanded its QE program this week, boosting asset purchases from SEK 300 billion to SEK 500 billion, until June 2021. In September, it will start purchasing corporate bonds in addition to government, municipal, and mortgage bonds. While the repo rate was left unchanged at zero, interest rates on the standing loan facility were slashed 10 basis points and on weekly extraordinary loans by 20 basis points. These measures should provide sufficient liquidity to allow Sweden to recover as economies open up across the globe. Chester Ntonifor Foreign Exchange Strategist chestern@bcaresearch.com Footnotes 1 Please see Foreign Exchange Strategy / Global Asset Allocation Strategy Special Report titled, "Currency Hedging: Dynamic Or Static? – A Practical Guide For Global Equity Investors (Part II)", dated October 13, 2017. Trades & Forecasts Forecast Summary Core Portfolio Tactical Trades Limit Orders Closed Trades
The GAA DM Equity Country Allocation model is updated as of June 30, 2020. The model has added another 6 points to the US overweight at the expense of the euro area, mainly Germany, Netherlands, and Spain. The driving force for this change is from the relatively favorable momentum and liquidity indicators, despite an unfavorable valuation indicator. Now the top four overweight countries are the US, Spain, Australia, and Sweden, while the biggest four underweight countries remain Japan, the UK, France, and Switzerland, as shown in Table 1. Table 1Model Allocation Vs. Benchmark Weights
GAA Quant Model Updates
GAA Quant Model Updates
As shown in Table 2 and Charts 1, 2 and 3, the overall model outperformed the MSCI World benchmark in June by 49 bps. The Level 2 model outperformed its benchmark by 162 bps, thanks largely to the underweight in Japan and the UK, as well as the overweight in Australia and Spain. The Level 1 model underperformed slightly by 3 bps due to the slight overweight in the US. Since going live, the overall model has outperformed its MSCI World benchmark by 260 bps, with 463 bps of outperformance from the Level 2 model, and 29 bps of outperformance from the Level 1 model. Table 2Performance (Total Returns In USD %)
GAA Quant Model Updates
GAA Quant Model Updates
Chart 1GAA DM Model Vs. MSCI World
GAA DM Model Vs. MSCI World
GAA DM Model Vs. MSCI World
Chart 2GAA US Vs. Non US Model (Level 1)
GAA US Vs. Non US Model (Level 1)
GAA US Vs. Non US Model (Level 1)
Chart 3GAA Non US Model (Level 2)
GAA Non US Model (Level 2)
GAA Non US Model (Level 2)
For more on historical performance, please refer to our website https://www.bcaresearch.com/site/trades/allocation_performance/latest/G…. For more details on the models, please see Special Report, “Global Equity Allocation: Introducing The Developed Markets Country Allocation Model,” dated January 29, 2016, available at https://gaa.bcaresearch.com. Please note that the overall country and sector recommendations published in our Monthly Portfolio Update and Quarterly Portfolio Outlook use the results of these quantitative models as one input, but do not stick slavishly to them. We believe that models are a useful check, but structural changes and unquantifiable factors need to be considered as well when making overall recommendations. GAA Equity Sector Selection Model The GAA Equity Sector Model (Chart 4) is updated as of June 30, 2020. Chart 4Overall Model Performance
Overall Model Performance
Overall Model Performance
The model’s relative tilts between cyclicals and defensives have changed compared to last month. The model maintains its cyclical stance driven by an improvement in its global growth proxy. The model reversed its overweight position on the only defensive sector where it was previously overweight, Healthcare, given a deterioration in its momentum component. Over the past month, the model outperformed its benchmark by 42 basis points. Year-to-date, the model has outperformed its benchmark by 109 basis points, and 108 basis points since inception. Table 3Overall Model Performance
GAA Quant Model Updates
GAA Quant Model Updates
Table 4Current Model Allocations
GAA Quant Model Updates
GAA Quant Model Updates
The model’s global growth proxy improved – driven by EM currencies and rising metal prices, and therefore continues to remain positive on cyclical sectors. Global monetary easing and low rates should keep the liquidity component favoring a mixed bag of cyclical and defensive sectors. The valuation component remains muted across all sectors except Energy. However, multiple sectors continue to be near the expensive and cheap zones – mainly Info Tech and Consumer Discretionary (expensive), and Real Estate and Consumer Staples (cheap). The model awaits confirming momentum signals to change recommendations for those sectors. The model is now overweight four cyclical sectors in total. These are Information Technology, Consumer Discretionary, Communication Services, and Materials. For more details on the model, please see the Special Report “Introducing the GAA Equity Sector Selection Model”, dated July 27, 2016, as well as the Sector Selection Model section in the Special Alert “GAA Quant Model Updates,” dated March 1, 2019, available at https://gaa.bcaresearch.com. Xiaoli Tang Associate Vice President xiaoliT@bcaresearch.com Amr Hanafy Senior Analyst amrh@bcaresearch.com
Highlights In the short run, extreme policy uncertainty is problematic for risk assets. In the long run, gargantuan fiscal and monetary stimulus continues to support cyclical trades. Equity volatility always increases in the lead-up to US presidential elections. Trump has a 35% chance of reelection. The US-China trade deal is intact for now but the risk of a strategic crisis or tariffs is about 40%. Our Turkish GeoRisk Indicator is lower than it should be based on Turkey’s regional escapades. Feature US equities fell back by 2.6% on June 24 as investors took notice of rising near-term risks to the rally. With gargantuan global monetary and fiscal stimulus, we expect the global stock-to-bond ratio to rise over the long run (Chart 1). However, we still see downside risks prevailing in the near term related to the pandemic, US politics, geopolitics, and the rollout of additional stimulus this summer. Chart 1Risk-On Phase Continues - But Risks Mounting
Risk-On Phase Continues - But Risks Mounting
Risk-On Phase Continues - But Risks Mounting
Chart 2Policy Uncertainty Hitting Extremes
Policy Uncertainty Hitting Extremes
Policy Uncertainty Hitting Extremes
Global economic policy uncertainty is skyrocketing – particularly due to the epic the November 3 US election showdown. Yet Chinese policy uncertainty remains elevated and will rise higher given that the pandemic epicenter now faces an unprecedented challenge to its economic and political order. China’s economic instability will increase emerging market policy uncertainty (Chart 2). Only Europe is seeing political risk fall, yet Trump’s threats of tariffs against Europe this week highlight that he will resort to protectionism if his approval rating does not benefit from stock market gains, which is currently the case. The COVID-19 outbreak is accelerating in the US in the wake of economic reopening and insufficient public adherence to health precautions and distancing measures. The divergence with Europe is stark (Chart 3). Authorities will struggle to institute sweeping lockdowns again, but some states are tightening restrictions on the margin and this will grow. Chart 3US COVID-19 Outbreak
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
The divergence between daily new infection cases and new deaths in the US, as well as countries as disparate as Sweden and Iran, is not entirely reassuring. The US is effectively following Sweden’s “light touch” model. Ultimately COVID is not much of a risk if deaths are minimized – but tighter social restrictions will frighten the markets regardless (Chart 4). President Trump’s election chances have fallen under the weight of the pandemic – followed by social unrest and controversy over race relations. But net approval on handling the economy is holding up well enough (Chart 5). Chart 4Divergence In New Cases Versus New Deaths
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Chart 5Trump’s Lifeline Is The Economy
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Our subjective 35% odds of reelection still seem appropriate for now – but we will upgrade Trump if the financial and economic rebound is sustained while his polling improves. His approval should pick up in the face of a collapse of law and order, not to mention left-wing anarchists removing or vandalizing historical monuments to America’s Founding Fathers and some great public figures who had nothing to do with the Confederacy in the Civil War. Equity volatility will increase ahead of the US election. Chart 6Volatility Always Rises Before US Elections
Volatility Always Rises Before US Elections
Volatility Always Rises Before US Elections
Equity volatility always increases in the lead up to modern American elections (Chart 6) and this year’s extreme polarization, high unemployment, and precarious geopolitical environment suggest that negative surprises could be worse than usual, notwithstanding the tsunami of stimulus. So far this year the S&P 500 is tracing along the lower end of its historical performance during presidential election years. This is consistent with a change of government in November, unless it continues to power upward over the next four months – typically a change of ruling party requires a technical correction on the year. Our US Equity Strategist, Anastasios Avgeriou, also expects the market to begin reacting to political risk – and he precisely timed the market’s peak and trough over the past year (Chart 7). We suspect that the positive correlation between the S&P and the Democratic Party’s odds of a full sweep of government is spurious. The reason the S&P has recovered is because of the economic snapback from the lockdowns and the global stimulus. The reason the odds of a Blue Wave election have surged is because the pandemic and recession decimated Trump and the Republicans. Going forward, the market needs to do more to discount a Democratic sweep. At 35%, this scenario is underrated in Chart 8, which considers all possible presidential and congressional combinations. Standalone bets put the odds of a Blue Wave at slightly above 50%. We have always argued that the party that wins the White House in 2020 is highly likely to take the Senate. Chart 7Market At Risk Of Election Cycle
Market At Risk Of Election Cycle
Market At Risk Of Election Cycle
Chart 8Market Will Soon Worry About 'Blue Wave'
Market Will Soon Worry About 'Blue Wave'
Market Will Soon Worry About 'Blue Wave'
True, the US is monetizing debt and this will push risk assets higher regardless over the long run. But if former Vice President Joe Biden wins the presidency, he will create a negative regulatory shock for American businesses, and if his party takes the Senate, then corporate taxes, capital gains taxes, federal minimum wages, liability insurance, and the cost of carbon (implicitly or explicitly) will all rise. The market must also reckon with the possibility that Trump is reelected or that he becomes firmly established as a “lame duck” and thus takes desperate measures prior to the election. His threat to impose tariffs on Europe this week underscores our point that if Trump’s approval rating stays low, despite a rising stock market, then the temptation to spend financial capital in pursuit of political capital will rise. This will involve a hard line on immigration and trade. Bottom Line: Tactically, there is more downside. Strategically, we remain pro-cyclical. Stimulus Hiccups This Summer One reason we have urged investors to buy insurance against downside risks this month is because of hurdles in rolling out the next round of fiscal stimulus. The four key drivers of the global growth rebound are liquidity, fiscal easing (Chart 9), an enthusiastic private sector response, and the large cushion of household wealth prior to the crisis. This is according to Mathieu Savary – author of our flagship Bank Credit Analyst report. Mathieu argues that it will be harder for investors to overlook policy uncertainty after the stimulus slows, i.e. the second derivative of liquidity turns negative. Chart 9Gargantuan Fiscal Stimulus
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
The massive increase in budget deficits and the quick recovery in activity amid reopening have reduced politicians’ sense of urgency. We fear that the stock market will have to put more pressure on lawmakers to force them to provide more largesse. Ultimately they will do so – but if they delay, and if delay looks like it is turning into botching the job, then markets will temporarily panic. Why are we confident stimulus will prevail? In the United States, fiscal bills have flown through Congress despite record polarization. Democrats cannot afford to obstruct the stimulus just to hurt the economy and the president’s reelection chances. Instead they have gone hog wild – promoting massive spending across the board to demonstrate their fundamental proposition that government can play a larger and more positive role in Americans’ lives. Their latest proposal is worth $3 trillion, plus an infrastructure bill that nominally amounts to $500 billion over five years. President Trump, for his part, was always fiscally profligate and now wants $2 trillion in stimulus to fuel the economic recovery, thus increasing his chances of reelection as voters grow more optimistic in the second half of the year. He also wants $1 trillion in new infrastructure spending over five years. Yet Republican Senators are dragging their feet and offering only a $1 trillion package. In the end they will adopt Trump’s position because if they do not hang together, they will all hang separately in November. The debate will center on whether the extra $600 in monthly unemployment benefits will be continued (at a cost of $276bn in the previous Coronavirus Aid, Relief, and Economic Security Act). Republicans want to tie benefits to returning to work, since this generous subsidy created perverse incentives and made it more economical for many to stay on the dole. There will also be a debate over whether to issue another round of direct cash checks to citizens ($290bn in the CARES Act). Republicans want to prioritize payroll tax cuts, again focusing on reducing unemployment (Chart 10). Chart 10US Fiscal Stimulus Breakdown
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Our US bond strategist, Ryan Swift, has shown that the cash handouts present a substantial fiscal “cliff.” Without the original one-time stimulus checks, real personal income would have fallen 5% since February, instead of rising 9% (Chart 11). If Republicans refuse to issue a new round of checks, yet the extra unemployment benefits stay, then over $1 trillion in income will be needed to fill the gap so that overall personal income will end up flat since February. In other words, an ~8% increase in income less transfers from current levels is necessary to prevent overall personal income from falling below its February level. China and the EU will eventually provide more largesse. Republican Senators will capitulate, but the process could be rocky and the market should see volatility this summer. China may also be forced to provide more stimulus in late July at its mid-year Politburo meeting – any lack of dovishness at that meeting will disappoint investors. European talks on the Next Generation recovery fund could also see delays (though they are progressing well so far). Brexit trade deal negotiations pose a near-term risk. There is also a non-negligible chance that the German Constitutional Court will raise further obstructions with the European Central Bank’s quantitative easing programs on August 5. European risks are manageable on the whole, but the market is not discounting much (Chart 12). Chart 11Will Congress Takeaway The Money Tree?
Will Congress Takeaway The Money Tree?
Will Congress Takeaway The Money Tree?
Bottom Line: We expect the S&P 500 to trade in a range between 2800 and 3200 points during this period of limbo in which risks over pandemic response and political risks will come to the fore while the market awaits new stimulus measures, which may not be perfectly timely. Chart 12European Risks Are Getting Priced
European Risks Are Getting Priced
European Risks Are Getting Priced
Has The Phase One China Deal Failed Yet? President Trump’s threat this week to slap Europe with tariffs, if it imposes travel restrictions on the US over the coronavirus, points to the dynamic we have highlighted on the more consequential issue of whether Trump hikes broad-based tariffs on China, and/or nullifies the “Phase One” trade deal. Our sense is that if Trump is doing extremely poorly, or extremely well, in terms of opinion polls and the stock market, then the roughly 40% odds of sweeping punitive measures of some kind will go up (Diagram 1). Cumulatively we see the chance of a major tariff hike at 40%. Diagram 1Decision Tree: Risk Of Significant Trump Punitive Measures On China In 2020
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
White House trade czar Peter Navarro’s comments earlier this week, suggesting that the Phase One trade deal was already over, prompted Trump to tweet that he still fully supports the deal. Negotiations between Secretary of State Mike Pompeo and Chinese Politburo member Yang Jiechi also nominally kept the lid on tensions. However, China may need to depreciate the renminbi to ease deflationary pressures on its economy – and this would provoke Trump to retaliate (Chart 13). Chart 13Chinese Depreciation Would Provoke Trump
Chinese Depreciation Would Provoke Trump
Chinese Depreciation Would Provoke Trump
We have always argued against the durability of the Phase One trade deal. Investors should plan for it to fall apart. Judging by our China GeoRisk Indicator, investors are putting in a higher risk premium into Chinese equities (Chart 14). They are also doing so with Korean equities, which are ultimately connected with US-China tensions. Only Taiwan is pricing zero political risk, which is undeserved and explains why we are short Taiwanese equities. After China’s imposition of a controversial national security law in Hong Kong and America’s decision to prepare retaliatory sanctions, reports emerged that Chinese authorities ordered state-owned agricultural traders to halt imports of soybean and pork – and potentially corn and cotton. These reports were swiftly followed by others that highlighted that state-owned Chinese firms purchased at least three cargoes of US soybeans on June 1, in spite of China’s decision to stop imports.1 Thus this aspect of the deal has not yet collapsed. But we would emphasize that the constraints against a failure of the deal are not prohibitive this year. The $200 billion worth of additional Chinese imports over 2020-2021 promised in the deal included $32 billion worth of additional US farm purchases – with at least $12.5 billion in 2020 and $19.5 billion in 2021 over 2017 imports of $24 billion. However, to date, US agricultural exports to China suggest that China may not even meet 2017 levels (Chart 15). Chart 14GeoRisk Indicators Show Rising Risk
GeoRisk Indicators Show Rising Risk
GeoRisk Indicators Show Rising Risk
Chart 15Trade Deal Durability Still Shaky
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Soybeans account for roughly 60% of US agricultural exports to China. While Chinese imports are up so far this year relative to 2019, they remain well below pre-trade war levels. Although lower hog herds on the back of the African Swine Flu and disruptions caused by COVID-19 may be blamed, they are not the only cause of subdued purchases. The share of Chinese soybean imports coming from the US is also still below pre-trade war levels (Chart 16). Chart 16China Still Substituting Away From US
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
New Chinese regulation requiring documents assuring food shipments to China are COVID-19 free adds another hurdle – China already banned poultry imports from Tyson Foods Inc. plants. Although the US’s share of China’s pork imports has picked up significantly, it will not go far toward meeting the trade deal requirements. China’s pork purchases from the US were valued at $0.3 billion in 2017, while soybean imports came in at $14 billion. Bottom Line: Trump’s only lifeline at the moment is the economy which pushes against canceling the US-China deal. But if he becomes a lame duck – or if exogenous factors humiliate him – then all bets are off. The passage of massive stimulus in the US and China removes economic constraints to conflict. Will Erdogan Overstep In Libya? We have long been bearish on Turkey relative to other emerging markets due to President Tayyip Erdogan’s populist policies, which erode monetary and fiscal responsibility and governance. Turkey’s intervention in Libya has marked a turning point in the Libyan civil war. The offensive to seize Tripoli on the part of General Khalifa Haftar of the Tobruk-based Libyan National Army (LNA) has been met with defeat (Map 1). Map 1Libya’s Battlefront Is Closing In On The Oil Crescent
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Foreign backing has enabled the conflict. Egypt, the UAE, Saudi Arabia, and Russia are the Libyan National Army’s main supporters, while Turkey and Qatar support Prime Minister Fayez al-Sarraj of the UN recognized Government of National Accord (GNA). The GNA’s successes this year can be credited to Turkey, which ramped up its intervention in Libya, even as oil prices collapsed, hurting Haftar and his supporters. Now the battlefront has shifted to Sirte and the al-Jufra airbase – the largest in Libya – and is closing in on the eastern oil-producing crescent, which contains over 60% of Libya’s oil. The victor in Sirte will also have control over the oil ports of Sidra, Ras Lanuf, Marsa al-Brega, and Zuwetina. With all parties eying the prize, the conflict is intensifying. Tripoli faces greater resistance as its forces move east. Egyptian President Abdel Fattah al-Sisi’s June 6 ceasefire proposal, dubbed the Cairo Initiative, was rejected by al-Sarraj and Turkey. Instead, the Tripoli-based government wants to capture Sirte and al-Jufra before coming to the table. The recapturing of oil infrastructure would bring back some of Libya's lost output (Chart 17). Nevertheless, OPEC 2.0 is committed to keeping oil markets on track to rebalance, reducing the net effect of a Libyan production increase on global supplies. However, the GNA’s swift successes in the West may not be replicable as it moves further East, where support for Haftar is deeper and where the stakes are higher for both sides. This is demonstrated by the GNA’s failed attempt to capture Sirte on June 6. The battlefront is now at Egypt’s red line – GNA control of al-Jufra would pose a direct threat to Egypt and is thus considered a border in Egypt’s national security strategy. A push eastward risks escalating the conflict further by drawing in Egypt militarily. In a televised speech on June 20, al-Sisi threatened to deploy Egypt’s military if the red line is crossed. The statement was interpreted by Ankara as a declaration of war, raising the possibility that Egypt will go to war with Turkey in Libya. On paper, Egypt’s military is up to the task. Its recent upgrades have pulled up its ranking to ninth globally according to the Global Fire Power Index, surpassing Turkey’s strength in land and naval forces (Chart 18). However, while Turkey’s military has been active in other foreign conflicts such as in Syria, Egypt’s army is untested on foreign soil. Its most recent military encounter was the 1973 Yom Kippur War. Even after years of fighting, it has yet to declare victory against terrorist cells in the Sinai Peninsula. Thus Egypt’s rusty forces could face a protracted conflict in Libya rather than a swift victory. Chart 17GNA/Turkish Success Would Revive Libyan Oil Production
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Chart 18Egypt Is Militarily Capable … On Paper
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Other constraints may also deter al-Sisi from following through on his threat: Other Arab backers of the Libyan National Army – the UAE and Saudi Arabia – are unlikely to provide much support as their economies have been hammered by low oil prices. Egypt’s own economy is in poor shape to withstand a protracted war, with public debt on an unsustainable path. Not coincidentally, Egypt faces another potential military escalation to its south where it has been clashing with Ethiopia over the construction of the Grand Ethiopian Renaissance Dam on the Blue Nile. The dam will control Egypt’s water supply. The latest round of negotiations failed last week. While Cairo is hoping to obtain a bilateral agreement over the schedule for filling the dam, Addis Ababa has indicated that it will begin filling the dam in July regardless of whether an agreement is reached. Al-Sisi’s response to the deadlocked situation has been to request an intervention by the UN Security Council. However, as the July filling date nears, the Egypt-Ethiopia standoff risks escalating into war. For Egypt, there is an urgency to secure its future water supplies now before Ethiopia begins filling the dam. And while resolving the Libyan conflict is also a matter of national security – Egypt sees the Libyan National Army as a buffer between its porous western border and the extremist elements of the GNA – the risks are not as pressing. Thus a military intervention in Libya would distract Egypt from the Ethiopian conflict and risk drawing it into a war on two fronts. Moreover, Egypt generally, and al-Sisi in particular, risk losing credibility in case of a defeat. That said, Egypt has high stakes in Libya. A GNA defeat could annul the recent Libya-Turkey maritime demarcation agreement – a positive for Egypt’s gas ambitions – and eliminate the presence of unfriendly militias on its Western border. Thus, if the GNA or GNA-allied forces kill Egyptian citizens, or look as if they are capable of utterly defeating Haftar on his own turf, then it would be a prompt for intervention. Meanwhile Turkey’s regional influence and foreign policy assertiveness is growing – and at risk of over-extension. Erdogan’s interests in Libya stem from both economic and strategic objectives. In addition to benefitting from oil and gas rights and rebuilding contracts, Ankara’s strategy is in line with its pursuit of greater regional influence as set out in the Mavi Vatan, its current strategic doctrine.2 There are already rumors of Turkish plans to establish bases in the recently captured al-Watiya air base and Misrata naval base. This would be in addition to Ankara’s bases in Somalia and in norther Iraq. Erdogan is partly driven into these foreign policy adventures to distract from his domestic challenges and keep his support level elevated ahead of the 2023 general election (Chart 19). However, his growing assertiveness threatens to alienate European neighbors and NATO allies, which have so far played a minimal role in the Libyan conflict yet have important interests there. For now, the western powers seem focused on countering Russian intervention in Libya and the broader Mediterranean. Prime Minister al-Sarraj and General Stephen Townsend, head of US Africa Command (AFRICOM), met earlier this week and reiterated the need to return to the negotiating table and respect Libyan sovereignty and the UN arms embargo, with a focus on stemming Russian interference. However, Turkish relations with the West may take a turn for the worse if Erdogan oversteps. Turkey continues to threaten Europe with floods of refugees and immigrants if its demands are not met. This pressure will grow due to the COVID-19 crisis, which will ripple across the Middle East, Africa, and South Asia. Ankara also continues to press territorial claims in the Mediterranean Sea, ostensibly for energy development.3 Turkey has recently clashed with Greece and France on the seas. In sum, the Libyan conflict is intensifying as it moves into the oil crescent. The Turkey-backed GNA will face greater resistance in Sirte and al-Jufra, even assuming that Egypt does not follow through on its threat of intervening militarily. Erdogan’s foreign adventurism will provoke greater opposition in Libya and elsewhere among key western powers, Russia, and the Gulf Arab states. Bottom Line: The implication is that a deterioration in Turkey’s relationship with the West, military overextension, and continued domestic economic mismanagement will push up our Turkey GeoRisk Indicator, which is a way of saying that it will weigh on the currency (Chart 20). Chart 19Erdogan’s Fear Of Opposition Drives Bold Policy
Volatility And Mediterranean Quarrels (GeoRisk Update)
Volatility And Mediterranean Quarrels (GeoRisk Update)
Chart 20Foreign And Domestic Factors Will Push Up Turkish Risk
Foreign And Domestic Factors Will Push Up Turkish Risk
Foreign And Domestic Factors Will Push Up Turkish Risk
Stay short our “Strongman Basket” of emerging market currencies, including the Turkish lira. Investment Takeaways We entered the year by going strategically long EUR-USD, but closed the trade upon the COVID-19 lockdowns. We have resisted reinitiating it despite the 5% rally over the past three months due to extreme political risks this year, namely the US election and trade risks. Trump’s threat of tariffs on Europe this week highlights our concern. We will wait until the election outcome before reinstituting this trade, which should benefit over time as global and Chinese growth recover and the US dollar drops on yawning twin deficits. Throughout this year’s crisis we have periodically added cyclical and value plays to our strategic portfolio. We favor stocks over bonds and recommend going long global equities relative to the US 30-year treasuries. We are particularly interested in commodities that will benefit from ultra-reflationary policy and supply constraints due to insufficient capital spending. This month we recommend investors go long our BCA Rare Earth Basket, which features producers of rare earth elements and metals that can substitute for Chinese production (Chart 21). This trade reflects our macro outlook as well as our sense that the secular US-China strategic conflict will heat up before it cools down. Chart 21Position For An Escalation In The US-China Conflict
Position For An Escalation In The US-China Conflict
Position For An Escalation In The US-China Conflict
Matt Gertken Vice President Geopolitical Strategist mattg@bcaresearch.com Roukaya Ibrahim Editor/Strategist Geopolitical Strategy RoukayaI@bcaresearch.com Footnotes 1 Please see Karl Plume et al, "China buys U.S. soybeans after halt to U.S. purchases ordered: sources," Reuters, June 1, 2020. 2 The Mavi Vatan or “Blue Homeland Doctrine” was announced by Turkish Admiral Cem Gurdeniz in 2006 and sets targets to Turkish control in two main regions. The first region is the three seas surrounding it – the Mediterranean Sea, Aegean Sea, and Black Sea with the goal of securing energy supplies and supporting Turkey’s economic growth. The second region encompasses the Red Sea, Caspian Sea and Arabian Sea where Ankara has strategic objectives. 3 Ankara’s gas drilling activities off Cyprus have been a form of frequent provocation for Greece and Cyprus. Ankara has also stated that it may begin oil exploration under a controversial maritime deal with Libya as early as August. Section II: Appendix : GeoRisk Indicator China
China: GeoRisk Indicator
China: GeoRisk Indicator
Russia
Russia: GeoRisk Indicator
Russia: GeoRisk Indicator
UK
UK: GeoRisk Indicator
UK: GeoRisk Indicator
Germany
Germany: GeoRisk Indicator
Germany: GeoRisk Indicator
France
France: GeoRisk Indicator
France: GeoRisk Indicator
Italy
Italy: GeoRisk Indicator
Italy: GeoRisk Indicator
Canada
Canada: GeoRisk Indicator
Canada: GeoRisk Indicator
Spain
Spain: GeoRisk Indicator
Spain: GeoRisk Indicator
Taiwan
Taiwan: GeoRisk Indicator
Taiwan: GeoRisk Indicator
Korea
Korea: GeoRisk Indicator
Korea: GeoRisk Indicator
Turkey
Turkey: GeoRisk Indicator
Turkey: GeoRisk Indicator
Brazil
Brazil: GeoRisk Indicator
Brazil: GeoRisk Indicator
Section III: Geopolitical Calendar