One modern portfolio theory (MPT) pillar that is unquestionably broken is the use of volatility, specifically standard deviation, as a measure of risk. This initial error in MPT's development is a major contributor to active investment management underperformance.
Volatility Is Not Risk
The concept of volatility as risk rests on a critical assumption that is overlooked by most of the industry: Only in finance is risk defined as volatility, or the bumpiness of the ride.
Various dictionary definitions of risk converge on something like the “chance of loss.”
- Noun: exposure to the chance of injury or loss; a hazard or dangerous chance.
- Insurance: the degree of probability of such loss.
- Verb: to expose to the chance of injury or loss; hazard.
Not a single definition includes volatility as a part of its explanation. Dictionary definitions and popular understandings of risk might differ from a business definition, yet a popular business dictionary describes over a dozen different forms of risk, ranging from exchange rate risk to unsystematic risk, all of which focus on the chance of permanent loss.
The insurance business relies on an understanding of risk, and an insurance licensing tutorial says that “Risk means the same thing in insurance that it does in everyday language. Risk is the chance or uncertainty of loss.”
Only finance defines risk as short-term volatility. Why? In the 1950s, academics recognized that hundreds of years of statistics research thinking could be borrowed to analyze the performance of investment portfolios — if some of the definitions could be bent to their aims. Once standard deviation was transformed into “risk,” the work of analyzing portfolios could begin and theories could be developed.
The Origins of This Misconception
Harry Markowitz states, “V (variance) is the average squared deviation of Y from its expected value. V is a commonly used measure of dispersion,” in his seminal 1952 Journal of Finance paper “Portfolio Selection.” Then he continues:
“We next consider the rule that the investor does (or should) consider expected return a desirable thing and variance of return an undesirable thing. . . . We illustrate geometrically relations between beliefs and choice of portfolio according to the ‘expected returns — variance of returns’ rule.”
Whoa, hold on a second! Investors do want variance of return, and to the upside. Not only that, how did a blithe proposition regarding a statistical calculation turn into a rule in less than a paragraph? As Markowitz then states, again blithely, “[This rule] assumes that there is a portfolio which gives both maximum expected return and minimum variance, and it commends this portfolio to the investor.”
This sentence creates a major problem for how investment managers are currently evaluated. When investment product distributors prefer "maximum return versus minimum variance," then closet indexing is not far behind.
Markowitz is borrowing on hundreds of years of statistical theory to make an important point: Diversification can lead to better outcomes in investing. But to make the leap to volatility and its close cousin, beta, as risk measures, as much of the industry has done, is an egregious mistake.
Volatility Is Emotions
Nobel laureate Robert Shiller showed that stock prices fluctuate much more than the underlying dividends, the source of value, in his seminal paper. The implication is that stock price changes are largely driven by something other than changing fundamentals. Volatility is the result of investors' collective emotional decisions. Shiller’s contention has withstood the test of time. Numerous studies have attempted and failed to dislodge it.
So not only does volatility capture both undesirable down price movements along with desirable up movements, it is mostly driven by the collective emotions of investors and has little to do with fundamental risks. Since emotions are transitory and much of the resulting effect can be diversified away over time, volatility fails as a risk measure.
Finally, some maintain that since investors enter and exit funds based on strong short-term upsurges and short-term drawdowns, volatility represents business risk for the fund. But why should fund business risk be intertwined with investment risk? There need to be separate measures since the risk faced by investors and funds is distinctly different.
Possible Risk Measures
So if volatility as risk is flawed, how do we measure investment risk? The metric should focus on the chance of permanent loss — investment value dropping to zero, for example — or the opportunity cost of underperforming a benchmark.
Qualitative Risk Measures
One approach that we used at the Davis Appreciation and Income Fund is to carefully consider the fundamental risks facing a business. The varieties of risk could include economic, environmental, political, regulatory, public opinion, geographic, technology, competition, management, organizational, overhead, pricing power, equipment, raw materials, product distribution, access to capital, and capital structure, to name a few.
If the business is affected by one or more of these risks, that will likely influence the firm's ability to make good on its promises regardless of where you claim a cash flow in its capital structure (debt, preferred, convertible, equity, option, etc.). One drawback of such evaluation techniques: The subjective nature of these risks cannot be summarized in a single measure. But the truth is investment risk is complex and multifaceted, so no single number could suffice, much less an emotionally driven statistical measure like standard deviation.
Returns Relative to Opportunity Set
Pioneering work by Ron Surz called Portfolio Opportunity Distributions (POD) takes an entirely different approach. This performance- and risk-evaluation technique examines the strategy laid out by the investment manager in the prospectus and explores all possible portfolios the manager may have held within these constraints. It then compares actual manager performance to these opportunity sets.
This approach unshackles managers from being compared to an index. Instead, they are measured against their opportunity set. Significantly, the metric also takes care of the "free pass" problem, when benchmarks are the basis for comparison.
Tom’s firm AthenaInvest has developed a similar approach that evaluates fund performance relative to that of a strategy peer group.
This technique can also be applied to asset allocation and other portfolio decisions. For example, investing $10,000 in the S&P 500 at the end of 1950 would have generated $9 million by the end of 2016, while an investment in T-Bonds would have generated less than $500,000. The $8.5 million “left on the table” is the true risk, not the increased volatility of stocks over this period. The chance of a real loss should be the risk measure used in making such decisions, not the bumpiness of the ride. Viewed in this light, bonds are far riskier than stocks for building long-horizon wealth.
No Simple Solution
As Tom has told his investment classes for years: Academics have little meaningful insight into measuring risk. This hasn't exactly endeared him to department colleagues or to some of his students. In essence, he was saying that the research on measuring risk conducted at hundreds of academic institutions over the decades has largely been fruitless.
No discipline likes to admit such monumental failure. But this is where we are in finance today.
Forty years ago, measuring investment risk was largely the purview of sell-side and buy-side analysts. Today, we have come full circle: Once again analysts are the go-to source for assessing risk. It may be frustrating that their analysis cannot be summed up in a single number. But we tried a model that did just that and it failed.
Measuring investment risk is a messy process and is not amenable to a simple solution.
At the 70th CFA Institute Annual Conference, which will be held 21–24 May 2017, C. Thomas Howard will discuss ways that active equity mutual funds can be evaluated through behavioral concepts during his presentation, “The Behavioral Financial Analyst."
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43 Comments
I agree with your conclusion. There are certain things we just cant do. Defining all the risks and trying to measure the impact of those risks on an investment is a leap of faith. And trying to predict them is lunacy. Keep it simple with 1/N asset allocation and go enjoy your life.
Chuck-
Right on!
Jason,
The actuarial profession is also highly caught-up in measuring risk and pricing risk loads based on volatility measures (covariance, short-fall risk, VaR, etc.) and spends an inordinate amount of time on the theory of parceling-out shared covariance among risks (should it be additive, subadditive, should if be variance-based or standard deviation-based?). The profession, like modern finance, has found itself lost deep within the woods at the midpoint of its journey. However, like in the stock market, this theoretical pricing of risk is largely inconsequential, because ultimately it is the market that is the arbiter, not the actuary or theoretician going through the motions of a pricing model in a spreadsheet.
Experts in Insurance, Modern Finance, Political Science, Climatolgy etc. are all trying to do the impossible; predict the future. Perhaps its overconfidence bias at work. We can only infer so much from empirical data and then a black swan comes floating by, and more often then we think. Thats why insurance companies price their products with a huge margin of safety in their premiums as they prey on our anxieties. And thats why potfolio managers diversify.
Hello Chuck,
I agree with nearly everything that you wrote. I would add that securities analysts can also add in a margin of safety to analyses. I am a very big fan of margin of safety (see my post entitled, "Margin of Safety: The Lost Art" here on Enterprising Investor). Why? For black swans, human error, and other things that go FUBAR. By definition, the greatest risks are those for which there was no planning or accommodation. I cannot get perfect planning, but I can make an accommodation for imperfection.
Perhaps you might find this meaningful, and here I am about to reveal an insight that I believe deserves to be a major area of research. Namely, I think that portfolio thinking, including MPT, in many (perhaps most (let's get some data)) cases results in greater risks being taken on. How? If all you are evaluating are the variances and covariances, or if you think to yourself 'this asset is the risk portion of my portfolio' then you take on risks that otherwise may not make much sense otherwise. Here "no money down mortgages to first time home buyers who are at risk for losing their jobs" come to mind, for example. I could go on.
Yours, in service,
Jason
Hello Todd,
Thank you for the additional color about the actuarial profession. As I said in response to another comment in this thread, business people evaluate risk very differently than those harboring a closeted love for mathematics. That is, they tend to think about the chance of loss, as well as prospective threats to aspects of a business. Numbers play into it, but so does creativity, and scenario thinking. Many large scale businesses do a fantastic job of anticipating, planning for, and taking advantage of, risks.
Yours, in service,
Jason
Hi Chuck,
I am not so sure I agree with your interpretation of the conclusion. The insurance business underwrites risks of all kinds and has for hundreds of years, and quite successfully for the most part. But the actuarial framework seems to elude the interest and attention of finance for some reason. Most business risks are within a fairly constrained set. At the business level they manage these risks, so why can't an analyst identify them, too? Can't a difference of opinion between business/credit and the analyst about specific risks be a source of value add/long position, or value remove/short position?
Yours, in service,
Jason
...oh, and Chuck, I meant to ask you two questions: 1) what is the shape of your distribution; 2) beta has the same problems as standard deviation, so how are you rectifying those issues with 1/N asset allocation? And I guess a third occurs to me, are you advocating for 1/N exploration and production companies as diversification for a long-term equity investor?
Hi Jason and Tom,
This is an excellent article. I'll quibble with some pieces of your argument, but your fundamental point--that investors have missed the BIG RISK of forgoing enormous upside in order to avoid the little risk of volatility--is an extremely important one. Investors hurt themselves by choosing low-volatility investments, and investment managers hurt investors by encouraging such behavior. I believe it's that misdirection--encouraging investors to focus on short-term volatility, rather than helping them to realize upside outcomes--that explains the growth of the two most unfortunate forms of investment management, hedge funds and private equity (including private equity investments in my asset class, real estate), which together have deprived investors of literally trillions and trillions of dollars by sucking them into paying high fees AND forgoing upside outcomes in return for enabling them to use data that disguise their risks.
My main question regarding this article is: what does it have to do with an "active equity renaissance"? Chuck T offers a perfectly sensible response: "keep it simple with 1/N asset allocation"--and, I would add, minimize the loss to your portfolio in the process by choosing the lowest-cost passively managed instruments available in the process. What's wrong with that approach?
Hi Brad,
See my response to Chuck. But to your point about real estate. At the individual asset level, a shopping center in some neighborhood in some city somewhere, can you assess risk? How about if that shopping center is a part of a larger entity's portfolio of real estate assets, is it possible to assess the risk in their portfolio, or do you just use a single measure, the fluctuation in its securities price relative to a mean (i.e. beta)? I think a better understanding or risk by research analysts and portfolio managers is a rich source of alpha, either harvesting or loss avoidance. What could be simpler than evaluating risk the way the underlying business/credit does?
Yours, in service,
Jason