Crash-Proof Investing

As markets continue to make new highs against a backdrop of ever diminishing participation and trading volume, investors have legitimate reasons for being concerned about prospects for the remainder of 2016 and beyond, even without consideration to the myriad of economic and geopolitical risks that now confront the US and global economies. Against that backdrop, remaining fully invested is a test of nerves for those whose instinct is that they may be picking up pennies in front an oncoming steamroller.  On the other hand, there is a sense of frustration in cashing out, only to watch markets surge another several hundred points to new highs.

In this article I am going to outline some steps investors can take to match their investment portfolios to suit current market conditions in a way that allows them to remain fully invested, while safeguarding against downside risk.  In what follows I will be using our own Strategic Volatility Strategy, which invests in volatility ETFs such as the iPath S&P 500 VIX ST Futures ETN (NYSEArca:VXX) and the VelocityShares Daily Inverse VIX ST ETN (NYSEArca:XIV), as an illustrative example, although the principles are no less valid for portfolios comprising other ETFs or equities.

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Risk and Volatility

Risk may be defined as the uncertainty of outcome and the most common way of assessing it in the context of investment theory is by means of the standard deviation of returns.  One difficulty here is that one may never ascertain the true rate of volatility – the second moment – of a returns process; one can only estimate it.  Hence, while one can be certain what the closing price of a stock was at yesterday’s market close, one cannot say what the volatility of the stock was over the preceding week – it cannot be observed the way that a stock price can, only estimated.  The most common estimator of asset volatility is, of course, the sample standard deviation.  But there are many others that are arguably superior:  Log-Range, Parkinson, Garman-Klass to name but a few (a starting point for those interested in such theoretical matters is a research paper entitled Estimating Historical Volatility, Brandt & Kinlay, 2005).

Leaving questions of estimation to one side, one issue with using standard deviation as a measure of risk is that it treats upside and downside risk equally – the “risk” that you might double your money in an investment is regarded no differently than the risk that you might see your investment capital cut in half.  This is not, of course, how investors tend to look at things: they typically allocate a far higher cost to downside risk, compared to upside risk.

One way to address the issue is by using a measure of risk known as the semi-deviation.  This is estimated in exactly the same way as the standard deviation, except that it is applied only to negative returns.  In other words, it seeks to isolate the downside risk alone.

This leads directly to a measure of performance known as the Sortino Ratio.  Like the more traditional Sharpe Ratio, the Sortino Ratio is a measure of risk-adjusted performance – the average return produced by an investment per unit of risk.  But, whereas the Sharpe Ratio uses the standard deviation as the measure of risk, for the Sortino Ratio we use the semi-deviation. In other words, we are measuring the expected return per unit of downside risk.

There may be a great deal of variation in the upside returns of a strategy that would penalize the risk-adjusted returns, as measured by its Sharpe Ratio. But using the Sortino Ratio, we ignore the upside volatility entirely and focus exclusively on the volatility of negative returns (technically, the returns falling below a given threshold, such as the risk-free rate.  Here we are using zero as our benchmark).  This is, arguably, closer to the way most investors tend to think about their investment risk and return preferences.

In a scenario where, as an investor, you are particularly concerned about downside risk, it makes sense to focus on downside risk.  It follows that, rather than aiming to maximize the Sharpe Ratio of your investment portfolio, you might do better to focus on the Sortino Ratio.

 

Factor Risk and Correlation Risk

Another type of market risk that is often present in an investment portfolio is correlation risk.  This is the risk that your investment portfolio correlates to some other asset or investment index.  Such risks are often occluded – hidden from view – only to emerge when least wanted.  For example, it might be supposed that a “dollar-neutral” portfolio, i.e. a portfolio comprising equity long and short positions of equal dollar value, might be uncorrelated with the broad equity market indices.  It might well be.  On the other hand, the portfolio might become correlated with such indices during times of market turbulence; or it might correlate positively with some sector indices and negatively with others; or with market volatility, as measured by the CBOE VIX index, for instance.

Where such dependencies are included by design, they are not a problem;  but when they are unintended and latent in the investment portfolio, they often create difficulties.  The key here is to test for such dependencies against a variety of risk factors that are likely to be of concern.  These might include currency and interest rate risk factors, for example;  sector indices; or commodity risk factors such as oil or gold (in a situation where, for example, you are investing a a portfolio of mining stocks).  Once an unwanted correlation is identified, the next step is to adjust the portfolio holdings to try to eliminate it.  Typically, this can often only be done in the average, meaning that, while there is no correlation bias over the long term, there may be periods of positive, negative, or alternating correlation over shorter time horizons.  Either way, it’s important to know.

Using the Strategic Volatility Strategy as an example, we target to maximize the Sortino Ratio, subject also to maintaining very lows levels of correlation to the principal risk factors of concern to us, the S&P 500 and VIX indices. Our aim is to create a portfolio that is broadly impervious to changes in the level of the overall market, or in the level of market volatility.

 

One method of quantifying such dependencies is with linear regression analysis.  By way of illustration, in the table below are shown the results of regressing the daily returns from the Strategic Volatility Strategy against the returns in the VIX and S&P 500 indices.  Both factor coefficients are statistically indistinguishable from zero, i.e. there is significant no (linear) dependency.  However, the constant coefficient, referred to as the strategy alpha, is both positive and statistically significant.  In simple terms, the strategy produces a return that is consistently positive, on average, and which is not dependent on changes in the level of the broad market, or its volatility.  By contrast, for example, a commonplace volatility strategy that entails capturing the VIX futures roll would show a negative correlation to the VIX index and a positive dependency on the S&P500 index.

Regression

 

Tail Risk

Ever since the publication of Nassim Taleb’s “The Black Swan”, investors have taken a much greater interest in the risk of extreme events.  If the bursting of the tech bubble in 2000 was not painful enough, investors surely appear to have learned the lesson thoroughly after the financial crisis of 2008.  But even if investors understand the concept, the question remains: what can one do about it?

The place to start is by looking at the fundamental characteristics of the portfolio returns.  Here we are not such much concerned with risk, as measured by the second moment, the standard deviation. Instead, we now want to consider the third and forth moments of the distribution, the skewness and kurtosis.

Comparing the two distributions below, we can see that the distribution on the left, with negative skew, has nonzero probability associated with events in the extreme left of the distribution, which in this context, we would associate with negative returns.  The distribution on the right, with positive skew, is likewise “heavy-tailed”; but in this case the tail “risk” is associated with large, positive returns.  That’s the kind of risk most investors can live with.

 

skewness

 

Source: Wikipedia

 

 

A more direct measure of tail risk is kurtosis, literally, “heavy tailed-ness”, indicating a propensity for extreme events to occur.  Again, the shape of the distribution matters:  a heavy tail in the right hand portion of the distribution is fine;  a heavy tail on the left (indicating the likelihood of large, negative returns) is a no-no.

Let’s take a look at the distribution of returns for the Strategic Volatility Strategy.  As you can see, the distribution is very positively skewed, with a very heavy right hand tail.  In other words, the strategy has a tendency to produce extremely positive returns. That’s the kind of tail risk investors prefer.

SVS

 

Another way to evaluate tail risk is to examine directly the performance of the strategy during extreme market conditions, when the market makes a major move up or down. Since we are using a volatility strategy as an example, let’s take a look at how it performs on days when the VIX index moves up or down by more than 5%.  As you can see from the chart below, by and large the strategy returns on such days tend to be positive and, furthermore, occasionally the strategy produces exceptionally high returns.

 

Convexity

 

The property of producing higher returns to the upside and lower losses to the downside (or, in this case, a tendency to produce positive returns in major market moves in either direction) is known as positive convexity.

 

Positive convexity, more typically found in fixed income portfolios, is a highly desirable feature, of course.  How can it be achieved?    Those familiar with options will recognize the convexity feature as being similar to the concept of option Gamma and indeed, one way to produce such a payoff is buy adding options to the investment mix:  put options to give positive convexity to the downside, call options to provide positive convexity to the upside (or using a combination of both, i.e. a straddle).

 

In this case we achieve positive convexity, not by incorporating options, but through a judicious choice of leveraged ETFs, both equity and volatility, for example, the ProShares UltraPro S&P500 ETF (NYSEArca:UPRO) and the ProShares Ultra VIX Short-Term Futures ETN (NYSEArca:UVXY).

 

Putting It All Together

While we have talked through the various concepts in creating a risk-protected portfolio one-at-a-time, in practice we use nonlinear optimization techniques to construct a portfolio that incorporates all of the desired characteristics simultaneously. This can be a lengthy and tedious procedure, involving lots of trial and error.  And it cannot be emphasized enough how important the choice of the investment universe is from the outset.  In this case, for instance, it would likely be pointless to target an overall positively convex portfolio without including one or more leveraged ETFs in the investment mix.

Let’s see how it turned out in the case of the Strategic Volatility Strategy.

 

SVS Perf

 

 

Note that, while the portfolio Information Ratio is moderate (just above 3), the Sortino Ratio is consistently very high, averaging in excess of 7.  In large part that is due to the exceptionally low downside risk, which at 1.36% is less than half the standard deviation (which is itself quite low at 3.3%).  It is no surprise that the maximum drawdown over the period from 2012 amounts to less than 1%.

A critic might argue that a CAGR of only 10% is rather modest, especially since market conditions have generally been so benign.  I would answer that criticism in two ways.  Firstly, this is an investment that has the risk characteristics of a low-duration government bond; and yet it produces a yield many times that of a typical bond in the current low interest rate environment.

Secondly, I would point out that these results are based on use of standard 2:1 Reg-T leverage. In practice it is entirely feasible to increase the leverage up to 4:1, which would produce a CAGR of around 20%.  Investors can choose where on the spectrum of risk-return they wish to locate the portfolio and the strategy leverage can be adjusted accordingly.

 

Conclusion

The current investment environment, characterized by low yields and growing downside risk, poses difficult challenges for investors.  A way to address these concerns is to focus on metrics of downside risk in the construction of the investment portfolio, aiming for high Sortino Ratios, low correlation with market risk factors, and positive skewness and convexity in the portfolio returns process.

Such desirable characteristics can be achieved with modern portfolio construction techniques providing the investment universe is chosen carefully and need not include anything more exotic than a collection of commonplace ETF products.

Portfolio Improvement for the Equity Investor

Portfolio

Equity investors and long-only portfolio managers are constantly on the lookout for ways to improve their portfolios, either by yield enhancement, or risk reduction.  In the case of yield enhancement, the principal focus is on adding alpha to the portfolio through stock selection and active management, while risk reduction tends to be accomplished through diversification.

Another approach is to seek improvement by adding investments outside the chosen universe of stocks, while remaining within the scope of the investment mandate (which, for instance, may include equity-related products, but not futures or options).  The advent of volatility products in the mid-2000’s offered new opportunities for risk reduction; but this benefit was typically achieved at the cost of several hundred basis points in yield.  Over the last decade, however, a significant evolution has taken place in volatility strategies, such that they can now not only provide insurance for the equity portfolio, but, in addition, serve as an orthogonal source of alpha to enhance portfolio yields.

An example of one such product is our volatility strategy, a quantitative approach to trading VIX-related ETF products traded on ARCA. A summary of the performance of the strategy is given below.

Vol Strategy perf Sept 2015

The mechanics of the strategy are unlikely to be of great interest to the typical equity investor and so need not detain us here.  Rather, I want to focus on how an investor can use such products to enhance their equity portfolio.

Performance of the Equity Market and Individual Sectors

The last five years have been extremely benign for the equity market, not only for the broad market, as evidenced by the performance of the SPDR S&P 500 Trust ETF (SPY), and also by almost every individual sector, with the notable exception of energy.

Sector ETF Performance 2012-2015

The risk-adjusted returns have been exceptional over this period, with information ratios reaching 1.4 or higher for several of the sectors, including Financials, Consumer Staples, Healthcare and Consumer Discretionary.  If the equity investor has been in a position to diversify his portfolio as fully as the SPY ETF, it might reasonably been assumed that he has accomplished the maximum possible level of risk reduction; at the same time, no-one is going to argue with a CAGR of 16.35%.  Yet, even here, portfolio improvement is possible.

Yield Enhancement

The key to improving the portfolio yield lies in the superior risk-adjusted performance of the volatility portfolio compared to the equity portfolio and also due the fact that, while the correlation between the two is significant (at 0.44), it is considerably lower than 1.  Hence there is potential for generating higher rates of return on a risk-adjusted basis by combining the pair of portfolios in some proportion.

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To illustrate this we assume, firstly, that the investor is comfortable with the currently level of risk in his broadly diversified equity portfolio, as measured by the annual standard deviation of returns, currently 10.65%.   Holding this level of risk constant, we now introduce an overlay strategy, namely the volatility portfolio, to which we seek to allocate some proportion of the available investment capital.  With this constraint it turns out that we can achieve a substantial improvement in the overall yield by reducing our holding in the equity portfolio to just over 2/3 of the current level (67.2%) and allocating 32.8% of the capital to the volatility portfolio.  Over the period from 2012, the combined equity and volatility portfolio produced a CAGR of 26.83%, but with the same annual standard deviation – a yield enhancement of 10.48% annually.  The portfolio Information Ratio improves from 1.53 to a 2.52, reflecting the much higher returns produced by the combined portfolio, for the same level of risk as before.

Chart

Risk Reduction

The given example may appear impressive, but it isn’t really a practical proposition.  Firstly, no equity investor or portfolio manager is likely to want to allocate 1/3 of their total capital to a strategy operated by a third party, no matter how impressive the returns. Secondly, the capacity in the volatility strategy is, realistically, of the order of $100 million.  A 32.8% allocation of capital from a sizeable equity portfolio would absorb a large proportion of the available capacity in the volatility ETF strategy, or even all of it.

A much more realistic approach would be to cap the allocation to the volatility component at a reasonable level – say, 5%.  Then the allocation from a $100M capital budget would be $5M, well within the capacity constraints of the volatility product.  In fact, operating at this capped allocation percentage, the volatility strategy provides capacity for equity portfolios of up to $2Bn in total capital.

Let’s look at an example of what can be achieved under a 5% allocation constraint.  In this scenario I am going to move along the second axis of portfolio improvement – risk reduction.  Here, we assume that we wish to maintain the current level of performance of the equity portfolio (CAGR 16.35%), while reducing the risk as much as possible.

A legitimate question at this stage would be to ask how it might be possible to reduce risk by introducing a new investment that has a higher annual standard deviation than the existing portfolio?  The answer is simply that we move some of our existing investment into cash (or, rather, Treasury securities).  In fact, by allocating the maximum allowed to the volatility portfolio (5%) and reducing our holding in the equity portfolio to 85.8% of the original level (with the remaining 9.2% in cash), we are able to create a portfolio with the same CAGR but with an annual volatility in single digits: 9.53%, a reduction in risk of  112 basis points annually.  At the same time, the risk adjusted performance of the portfolio improves from 1.53 to 1.71 over the period from 2012.

Of course, the level of portfolio improvement is highly dependent on the performance characteristics of both the equity portfolio and overlay strategy, as well as the correlation between them. To take a further example, if we consider an equity portfolio mirroring the characteristics of the Materials Select Sector SPDR ETF (XLB), we can achieve a reduction of as much as 3.31% in the annual standard deviation, without any loss in expected yield, through an allocation of 5% to the volatility overlay strategy and a much higher allocation of 18% to cash.

Other Considerations

Investors and money managers being what they are, it goes against the grain to consider allocating money to a third party – after all, a professional money manager earns his living from his own investment expertise, rather than relying on others.  Yet no investor can reasonably expect to achieve the same level of success in every field of investment.  If you have built your reputation on your abilities as a fundamental analyst and stock picker, it is unreasonable to expect that you will be able accomplish as much in the arena of quantitative investment strategies.  Secondly, by capping the allocation to an external manager at the level of 5% to 10%, your primary investment approach remains unaltered –  you are maintaining the fidelity of your principal investment thesis and investment mandate.  Thirdly, there is no reason why overlay strategies such as the one discussed here should not provide easy liquidity terms – after all, the underlying investments are liquid, exchange traded products. Finally, if you allocate capital in the form of a managed account you can maintain control over the allocated capital and make adjustments rapidly, as your investment needs change.

Conclusion

Quantitative strategies have a useful role to play for equity investors and portfolio managers as a means to improve existing portfolios, whether by yield enhancement, risk reduction, or a combination of the two.  While the level of improvement is highly dependent on the performance characteristics of the equity portfolio and the overlay strategy, the indications are that yield enhancement, or risk reduction, of the order of hundreds of basis points may be achievable even through very modest allocations of capital.

Crash-Protecting Your Portfolio With CrashMetrics

In a post on LinkedIn I referred to the concept of CrashMetrics and how it can be used for portfolio protection.  It’s a simple approach to the management of extreme risk that works rather well.  It can be summarized as “CAPM for crashes”.  Here’s how it works.

Let’s take Proctor and Gamble as our example stock.  We’ll use daily data from 1970-2014 for the stock and for the S&P 500 Index, as follows:

DateListPlot[PG=TimeSeries[FinancialData[“PG”,{{1970,1,2},{2014,12,31}}]],Filling->Axis]

PG 1970-2014

 

 

DateListPlot[SP500=TimeSeries[FinancialData[“^GSPC”,{{1970,1,2},{2014,12,31}}]],Filling->Axis]

SP500 Index 1970-2014

 

We are also going to need an estimate of the risk free rate of return.  We’ll use a 30-day T-Bill rate:

DateListPlot[TBill=TimeSeries[FinancialData[“^IRX”,{{1970,1,2},{2014,12,31}}]],Filling->Axis]

TBill 1970-2014

CAPM Beta Estimation

Next we convert the annual Bill yields into estimates of the continuously compounded daily return and subtract these from the gross returns for PG and the S&P 500 Index, to create series of excess returns for the stock and the index.

 SP500Dates=SP500[“Times”]
PGReturns=Log[PG[Drop[SP500Dates,1]]]-Log[PG[Drop[SP500Dates,-1]]];
SP500Returns=Log[Drop[SP500[“Values”],1]]-Log[Drop[SP500[“Values”],-1]];
TBillDailyRate=Log[TBill[Drop[SP500Dates,1]]]/250 /. Indeterminate->0;
Histogram[PGXReturns=PGReturns-TBillDailyRate,{-0.05,0.05,0.001}]

PG Excess Returns Hist

Excess Returns PG 1970-2014

SP500 Index Excess Returns Hist

Excess Returns S&P 500 Index 1970-2014

We are now ready to estimate the stock beta for PG, using a simple linear regression model of the excess returns in the stock vs. the excess returns in the S&P 500 Index:

 dataset=Partition[Riffle[SP500XReturns,PGXReturns],2
CAPM = LinearModelFit[dataset,x,x]

CAPM Model

From which we estimate the  beta for PG to be around 0.78 (the slope of the regression line in the scatterplot below).  That seems plausible for a large, diversified consumer goods manufacturer, which is likely to be less volatile than the broad index during normal market conditions.

 Show[ListPlot[dataset],Plot[CAPM[x],{x,-0.05,0.05},PlotStyle->Red]]

CAPM Scatterplot

The CAPM regression shows that around 40% of the variation in excess returns in PG is explained by movements in the broad market (the remainder is due to stock-specific risk factors):

 CAPM[“AdjustedRSquared”] = 0.40

That’s a typically scenario with the CAPM model, which is based on some fairly simple, but rather heroic assumptions that we need not delve too deeply into here.

CrashMetrics Approach

In CrashMetrics we focus exclusively in the left tail of the distribution.  For the S&P 500 index the average excess return is very close to zero, while the daily standard deviation of returns is just over 1.5%.  So let’s focus on down-moves that are, say, at least 3xSD, or larger.  We create a reduced data set comprising days on which the index declined by at least 4.5%, and repeat the regression procedure using just those 54 days:

 Dimensions[reducedDataset=Select[dataset,#[[1]] < -0.045&]{54,2}

 CrashM = LinearModelFit[reducedDataset,x,x]

CrashM Model

 Show[ListPlot[reducedDataset],Plot[CrashM[x],{x,0, -0.25},PlotStyle->Red]]

CrashM Scatterplot

Two points are especially noteworthy.

The first is that the beta for PG during major market down-moves is a lot higher than during normal markets (around 1.34 vs 0.78) and being greater than 1, indicates that during adverse conditions PG tends to exacerbate the down-turn in the broad market.

The second is that the regression R-squared is much higher (0.68) for the CrashMetrics regression model, reflecting the tendency of stocks to correlate more closely with the market index during major sell-offs. In that sense, the “crash-beta” estimate is a more reliable estimate than the regular CAPM beta.

How to Use CrashMetrics

How is this technique helpful to the portfolio manager?

To begin, you might want to estimate crash-betas for all of the stocks in your portfolio and for the portfolio as a whole, to give you a handle on how the portfolio is likely to behave under extreme stress.

You could then choose to make adjustments to the portfolio composition to reduce its crash exposure.  This can be done by reducing the allocations to high crash-beta stocks in favor of low crash-beta stocks.  Alternatively, you can buy tail protection using out-of-the-money put options in high-crash beta stocks.  What’s interesting about this technique is that you might end up paying less for crash-protection than you might think.

Taking our PG test case as an example, this is typically seen as a less risky stock and its options are priced accordingly.  Consequently, the Gamma in the options looks cheap when considering how the stock behaves during market crashes.  Conversely, options in very volatile stocks (AAPL springs  to mind, for example), are likely to be relatively highly priced, but may offer less protection during a crash scenario, depending on the behavior of the stock during major market declines.