Fat-tailed distribution


A fat-tailed distribution is a probability distribution that exhibits a large skewness or kurtosis, relative to that of either a normal distribution or an exponential distribution. In common usage, the term fat-tailed and heavy-tailed are synonymous, different research communities favor one or the other largely for historical reasons. Fat-tailed distributions have been empirically encountered in a variety of areas: physics, earth sciences, economics and political science. The class of fat-tailed distributions includes those whose tails decay like a power law, which is a common point of reference in their use in the scientific literature. However, fat-tailed distributions also include other slowly-decaying distributions, such as the log-normal.

The extreme case: a power-law distribution

The most extreme case of a fat tail is given by a distribution whose tail decays like a power law. s for various location and scale parameters. Cauchy distributions are examples of fat-tailed distributions.
That is, if the complementary cumulative distribution of a random variable X can be expressed as
then the distribution is said to have a fat tail if is small. For instance, if, the variance and the skewness of the tail is mathematically undefined, and hence larger than any normal or exponential distribution. For values of, the claim of a fat tail is more ambiguous, because in this parameter range, the variance, skewness, and kurtosis can be finite, depending on the precise value of, and thus potentially smaller than a high-variance normal or exponential tail. This ambiguity often leads to disagreements about precisely what is or is not a fat-tailed distribution. For, the moment is infinite, so for every power law distribution, some moments are undefined.
Note: here the tilde notation "" refers to the asymptotic equivalence of functions, meaning that their ratio tends to a constant. In other words, asymptotically, the tail of the distribution decays like a power law.

Fat tails and risk estimate distortions

Compared to fat-tailed distributions, in the normal distribution events that deviate from the mean by five or more standard deviations have lower probability, meaning that in the normal distribution extreme events are less likely than for fat-tailed distributions. Fat-tailed distributions such as the Cauchy distribution have "undefined sigma".
As a consequence, when data arise from an underlying fat-tailed distribution, shoehorning in the "normal distribution" model of risk—and estimating sigma based on a finite sample size—would understate the true degree of predictive difficulty. Many—notably Benoît Mandelbrot as well as Nassim Taleb—have noted this shortcoming of the normal distribution model and have proposed that fat-tailed distributions such as the stable distributions govern asset returns frequently found in finance.
The Black–Scholes model of option pricing is based on a normal distribution. If the distribution is actually a fat-tailed one, then the model will under-price options that are far out of the money, since a 5- or 7-sigma event is much more likely than the normal distribution would predict.

Applications in economics

In finance, fat tails often occur but are considered undesirable because of the additional risk they imply. For example, an investment strategy may have an expected return, after one year, that is five times its standard deviation. Assuming a normal distribution, the likelihood of its failure is less than one in a million; in practice, it may be higher. Normal distributions that emerge in finance generally do so because the factors influencing an asset's value or price are mathematically "well-behaved", and the central limit theorem provides for such a distribution. However, traumatic "real-world" events are usually not mathematically well-behaved.
Historical examples include the Wall Street Crash of 1929, Black Monday, Dot-com bubble, Late-2000s financial crisis, 2010 flash crash, the 2020 stock market crash
and the unpegging of some currencies.
Fat tails in market return distributions also have some behavioral origins and are therefore studied in behavioral finance.
In marketing, the familiar 80-20 rule frequently found is a manifestation of a fat tail distribution underlying the data.
The "fat tails" are also observed in commodity markets or in the record industry, especially in phonographic market. The probability density function for logarithm of weekly record sales changes is highly leptokurtic and characterized by a narrower and larger maximum, and by a fatter tail than in the Gaussian case. On the other hand, this distribution has only one fat tail associated with an increase in sales due to promotion of the new records that enter the charts.

Applications in geopolitics

In , political scientists Ian Bremmer and Preston Keat propose to apply the fat tail concept to geopolitics. As William Safire notes in his etymology of the term, a fat tail occurs when there is an unexpectedly thick end or “tail” toward the edges of a distribution curve, indicating an irregularly high likelihood of catastrophic events. This represents the risks of a particular event occurring that are so unlikely to happen and difficult to predict that many choose to ignore their possibility.