Contents
Systemic crises are rare but critical for long-term performance records. When the financial system fails, good trades become bad trades and many sensible investment strategies incur outsized losses due to deleveraging and liquidation pressure. To cope with systemic crises, managers have two principal sets of tools. The first is estimation and control of tail risk. The second is a plan of action for when system events occur. Estimating tail risk can make use of extreme value models, Bayesian risk forecasting, bubble indicators, and conditional value-at-risk models. Action plans for systemic crises can be based on research of systemic pressure points, guidance for shedding risk early in distress, rules for following market trends, and an adaptation of risk management to liquidity conditions.
Systemic risk in finance refers to the probability of the financial system failing at its essential functions, such as providing credit, making markets, or safeguarding securities and deposits. Typically, systemic risks build gradually over many years but materialize abruptly. They are hence a cause of extreme endogenous or setback risk (view summary of setback risk here) with rare incidences. Since years or decades pass between systemic crises, with many bonuses being awarded and vesting in the meantime, systemic risks are easily neglected in the day-to-day dispositions of investment managers.
However, how a manager prepares for and deals with systemic risk often makes or breaks long-term performance. Most investment strategies rely on some combination of directional or alternative risk premia and estimations of absolute and relative value. The basic principles of these are common across institutions. A systemic crisis typically derails all of these at the same time. This is because, in contrast to normal market drawdowns, systemic pressures trigger funding, accounting, or legal constraints that force position liquidation with little freedom of choice for portfolio managers. When a systemic crisis escalates the priority of institutions shifts from seeking returns to short-term capital preservation. As a result, the principles of efficient positioning or flows are often not only suspended but reversed. The best positions become the worst. With forced liquidations in thin liquidity, the trades that offered the most convincing value positions (by conventional standards) suddenly incur the greatest mark-to-market drawdowns. This happens because the expected return in the asset management industry is correlated with positions in normal times; good opportunities are rarely secret for long.
Moreover, standard risk management techniques fail in systemic crises. As volatility is soaring and correlations “all go to one”, positions that were calibrated according to value-at-risk give rise to unsustainable mark-to-market profit-and-loss volatility. Hedges may reduce average directional risk but give rise to large “basis risk” (profit and loss swings due to disparities in the returns of the main positions and the hedges). Also, as hedges typically raise the leverage of positions they make trades even more susceptible to forced deleveraging. Finally, diversification is of little help because the scope of inefficient flows is wide. Empirical research shows that a single global financial cycle floats or sinks most markets at the same time. (view post here).
Consideration of systemic risk in asset management also reduces the risk and consequences of crises themselves.
The standard policy response to private investment managers’ negligence of systemic risk is regulation. Yet, regulatory rules respond slowly to the evolution of the financial system and invite their own inefficiencies. A complementary policy is to increase the transparency of financial-economic information and reduce costs for allowing such information to be used in the investment process, for example through “quantamental systems” (view post here).
Standard risk management relies on past volatility of price changes, historical correlation, and assumptions regarding outliers of price changes beyond normal ranges. On this basis, the majority of portfolios of liquid financial instruments is managed based on some form of Value-at-Risk (VaR) model, a statistical estimate of a loss threshold that will only be exceeded with a low probability.
Unfortunately, past volatility is not always a helpful gauge for financial markets risk. Volatility is merely the magnitude of historic price fluctuations, while risk is the probability and scope of future permanent losses (view post here). The two concepts are not only different but may even become opposites. In particular, reliance on historic volatility can create an illusion of predictability that gives rise to excessive risk-taking. Indeed, low volatility itself is often a cause of high leverage and crowded positioning and hence conducive to subsequent outsized market movements.
Therefore, it is helpful to go beyond conventional risk metrics when assessing and calibrating the risk of large outlier events (“tail risk”):
Having a plan of action in a systemic crisis can greatly diminish its impact on performance. An effective contingency plan can be based on (i) continuous research of systemic vulnerabilities that gives familiarity with pressure points, (ii) a rational protocol for shedding risk early in market distress, (iii) rules for following market trends, and (iv) adaptation of risk management to liquidity conditions.
With the right preparations, investment managers can even benefit directly from systemic events, particularly if they have sufficient flexibility and risk limits to exploit price distortions and high-risk premia paid. For systemic value based on price distortions see the related summary here. And for detecting and receiving high-risk premia see the section on “implicit subsidies” here.
No single investor or institution has all pieces of the puzzle that is systemic risk. Investors typically specialize in markets or geographic regions. However, every financial market depends on all other financial markets to some extent. At times particular market segments, such as asset-backed securities or technology stocks, can have a dominant global influence. Even small and remote markets, such as Iceland or Greece have in the past triggered sizeable global market moves. Links between seemingly separate markets often reflect their communal dependence on global liquidity, which is the ease of financing transmitted by a small number of financial centers (view post here).
Therefore, investment managers must engage in active risk information exchange, trading their insights for the insights of colleagues. Indeed, theoretical and experimental research suggests that portfolio managers will generally share ideas and research if mutual feedback is valuable (view post here). This creates investor value at all times but particularly when systemic risk is rising because investment managers that are part of an information network are better positioned to act early, as they know more and know better what others know. From a social welfare angle, this process of information exchange is essential to disseminate concerns over systemic crises. The dissemination turn may serve to warn market participants, policymakers, and the broader public, smoothing market volatility.
Jupyter Notebook There are plausible relations between past and future short-term trends...
A crowded trade is a position with a high ratio of active...
Jupyter Notebook Two valid methods to combine macro trading factors into a...
Jupyter Notebook Trend-following strategies rely on the persistence of market trends. Such...
Jupyter Notebook Random forest regression combines the discovery of complex predictive relations...
This post is a condensed guide on best practices for developing systematic...
Macrosynergy is a London based macroeconomic research and technology company whose founders have developed and employed macro quantamental investment strategies in liquid, tradable asset classes, across many markets and for a variety of different factors to generate competitive, uncorrelated investment returns for institutional investors for two decades. Our quantitative-fundamental (quantamental) computing system tracks a broad range of real-time macroeconomic trends in developed and emerging countries, transforming them into macro systematic quantamental investment strategies. In June 2020 Macrosynergy and J.P. Morgan started a collaboration to scale the quantamental system and to popularize tradable economics across financial markets.