
Tail Risk
Tail risk is a form of portfolio risk that arises when the possibility that an investment will move more than three standard deviations from the mean is greater than what is shown by a normal distribution. Tail risk is a form of portfolio risk that arises when the possibility that an investment will move more than three standard deviations from the mean is greater than what is shown by a normal distribution. The normal distribution curve has a kurtosis equal to three and, therefore, if a security follows a distribution with kurtosis greater than three, it is said to have fat tails. The assumption that market returns follow a normal distribution is key to many financial models, such as Harry Markowitz's modern portfolio theory (MPT) and the Black-Scholes Merton option pricing model. When a portfolio of investments is put together, it is assumed that the distribution of returns will follow a normal distribution.

What Is Tail Risk?
Tail risk is a form of portfolio risk that arises when the possibility that an investment will move more than three standard deviations from the mean is greater than what is shown by a normal distribution.
Tail risks include events that have a small probability of occurring, and occur at both ends of a normal distribution curve.




Understanding Tail Risk
Traditional portfolio strategies typically follow the idea that market returns follow a normal distribution. However, the concept of tail risk suggests that the distribution of returns is not normal, but skewed, and has fatter tails.
The fat tails indicate that there is a probability, which may be larger than otherwise anticipated, that an investment will move beyond three standard deviations. Distributions that are characterized by fat tails are often seen when looking at hedge fund returns, for example.
The chart below depicts three curves of increasing right-skewness, with fat tails to the downside — and which differ from the symmetrical bell curve shape of the normal distribution.
Right skewness.
Normal Distributions and Asset Returns
When a portfolio of investments is put together, it is assumed that the distribution of returns will follow a normal distribution. Under this assumption, the probability that returns will move between the mean and three standard deviations, either positive or negative, is approximately 99.7%. This means that the probability of returns moving more than three standard deviations beyond the mean is 0.3%.
The assumption that market returns follow a normal distribution is key to many financial models, such as Harry Markowitz's modern portfolio theory (MPT) and the Black-Scholes Merton option pricing model. However, this assumption does not properly reflect market returns, and tail events have a large effect on market returns.
Tail risk is highlighted in Nassim Taleb's bestselling financial book The Black Swan.
Other Distributions and Their Tails
Stock market returns tend to follow a normal distribution that has excess kurtosis. Kurtosis is a statistical measure that indicates whether observed data follow a heavy or light tailed distribution in relation to the normal distribution. The normal distribution curve has a kurtosis equal to three and, therefore, if a security follows a distribution with kurtosis greater than three, it is said to have fat tails.
A leptokurtic distribution, or heavy/fat tailed distribution, depicts situations in which extreme outcomes have occurred more than expected. Compared to the normal distribution, these curves have excess kurtosis. Therefore, securities that follow this distribution have experienced returns that have exceeded three standard deviations beyond the mean more than 0.3% of the observed outcomes.
The graph below depicts the normal distribution (in green) as well as increasingly leptokurtic curves (in red and blue), which exhibit fat tails.
Kurtosis describes the different kinds of peaks that probability distributions can have. ThoughtCo
Hedging Against Tail Risk
Although tail events that negatively impact portfolios are rare, they may have large negative returns. Therefore, investors should hedge against these events. Hedging against tail risk aims to enhance returns over the long-term, but investors must assume short-term costs. Investors may look to diversify their portfolios to hedge against tail risk.
For example, if an investor is long exchange-traded funds (ETFs) that track the Standard & Poor's 500 Index (S&P 500), the investor could hedge against tail risk by purchasing derivatives on the Chicago Board Options Exchange (CBOE) Volatility Index, which is inversely correlated to the S&P 500.
Related terms:
Asymmetrical Distribution
Asymmetrical distribution often occurs during volatile markets when the distribution of an asset's investment returns exhibits a skewed pattern. read more
Bell Curve
A bell curve describes the shape of data conforming to a normal distribution. read more
Derivative
A derivative is a securitized contract whose value is dependent upon one or more underlying assets. Its price is determined by fluctuations in that asset. read more
Empirical Rule
The empirical rule is a statistical fact stating that for a normal distribution, 99.7% of observations will fall within three standard deviations from the mean. read more
Exchange Traded Fund (ETF) and Overview
An exchange traded fund (ETF) is a basket of securities that tracks an underlying index. ETFs can contain investments such as stocks and bonds. read more
Excess Kurtosis
Excess kurtosis describes a probability distribution with fat fails, indicating an outlier event has a higher than average chance of occurring. read more
Hedge Fund
A hedge fund is an actively managed investment pool whose managers may use risky or esoteric investment choices in search of outsized returns. read more
Inverse Correlation
An inverse correlation is a relationship between two variables such that when one variable is high the other is low and vice versa. read more
Kurtosis
Kurtosis is a statistical measure used to describe the distribution of observed data around the mean. It is sometimes referred to as the "volatility of volatility." read more
Leptokurtic
Leptokurtic distributions are statistical distributions with kurtosis over three. read more