Stable Paretian Distributions

Explained:

reduced stable distribution

stable distribution

stable Paretian distribution

standardized stable distribution

 

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Sums of random variables occur frequently in financial applications. Let's start with an example.

Assume that monthly log returns of some asset are independent and normally distributed. The asset's one-year return will be the sum of 12 consecutive monthly returns. Will that one-year return also be normally distributed? The answer is "yes." This is because the 12 monthly returns are independent and normal, so they are joint-normal. A sum of joint-normal random variables must be normal.

What if the monthly returns are not normal? Assume that they are independent and identically distributed. Their common distribution is not normal, but its mean and standard deviation exist. Will the annual return also have that same distribution? Now the answer is "no." This follows from the central limit theorem, which tell us that the distribution for the annual return will be approximately normal.

This poses a problem for finance. We don't want to have to change our financial models each time we change our unit of time. If we assume that returns have a certain distribution over a day, we would like them to have the same distribution (perhaps with a different mean and standard deviation) over a month. If we assume the returns are normally distributed, there is no problem, but what if we want to assume some other distribution?

   

This is the problem Benoit Mandelbrot contemplated in the early 1960s. It would lead to his groundbreaking (1963) paper suggesting that asset returns be modeled, not with the normal distribution assumed in the then-emerging random walk hypothesis, but with stable Paretian distributions.

Mandelbrot was modeling cotton prices. His analysis of historical data indicated that returns had sample distributions that were highly leptokurtic. They had "fat tails" that made extreme market moves more likely than would be predicted by the normal distribution. This phenomena has been observed before, and today we know it is typical of most asset returns—stock, bond, commodity and energy returns routinely exhibit leptokurtosis. This is particularly extreme for energy returns.

Fat-Tailed Return Distributions
Exhibit 1

Probability density functions (PDFs) are illustrated for a normal and a leptokurtic distribution. Sample asset return distributions tend to be leptokurtic. This means that markets tend to experience extreme moves more frequently than would be predicted based on an assumption that returns are normally distributed.

Mandelbrot didn't want to have to assume one distribution for daily returns, another for monthly returns, and still another for annual returns. This would reduce any model to mere empirical distribution fitting. He wanted a consistent, flexible model that could be fit to different asset returns irrespective of the unit of time over which returns were calculated. This was possible with a model that assumed normally distributed returns, but normal distributions didn't fit historical data well.

   

The problem was the central limit theorem, which tells us that sums of random variables will converge to a normal random variable. The only way to get around the central limit theorem was to depart from one of its two main assumptions:

that the random variables are independent, and

that they have finite standard deviations.

Abandoning either would mean departing from the random walk hypothesis. The literature for that hypothesis gave strong empirical support for the first assumption, so Mandelbrot chose to depart from the second and consider distributions whose standard deviations don't exist.

A probability distribution with distribution function is said to be stable if for any independent random variables all having that distribution function , there exists constants a and b such that the random variable

[1]

also has that same distribution function . Stated informally, such a distribution is "stable" under addition.

 

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As we have already noted, the central limit theorem suggests that the normal distribution is the only stable distribution whose standard deviation is defined. There are others whose standard deviations are not defined (or can be thought of as infinite). Paul Levy (1925, 1937) identified the general class of stable distributions. Just as a normal distribution can be specified with a mean μ and standard deviation σ, stable distributions can be specified with four parameters:

determines tail thickness. It satisfies 0 < 2. Generally, as decreases, tail thickness increases.

determines asymmetry. It satisfies –1 1, with = 0 corresponding to a symmetric distribution. A positive indicates that the right tail is fatter than the left tail. If = 1, must equal 0.

is a scale parameter satisfying 0, although the case = 0 is degenerate (similar to having a 0 standard deviation).

is a location parameter and can take on any real value. If > 1, equals the mean of the distribution.

This is one standard parameterization that is commonly used. Other very similar parameterizations are also used, so be careful to check any author's definitions carefully.

The distribution's mean exists so long as > 1. Its standard deviation exists only in the case = 2. Just as we define a standard normal distribution as a normal distribution whose mean and standard deviation are 0 and 1, we say a stable distribution is standardized or reduced if = 1 and = 0.

   

There are only three cases in which a closed form expression is known for a stable distribution's probability density function. These are the

normal distribution: = 2 (the value of becomes irrelevant in this case),

Cauchy distribution: = 1, = 0,

Levy distribution: = 0.5, = 1.

For this reason, theoretical work with stable distributions tends to be presented in terms of characteristic functions instead of probability density functions or distribution functions. However, density functions or distribution functions can always be valued using numerical techniques. The general formula for the characteristic function of a stable distribution is

[2]
 
 

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where log denotes a natural logarithm and x/|x| is understood to equal 0 when x = 0.

Non-normal stable distributions have "fat tails" that generally satisfy a convergence property defined by Vilfredo Pareto. For this reason, non-normal stable distributions are often called stable Paretian distributions.

Despite their merits for modeling asset returns, stable Paretian distributions have remained a fringe topic in finance, occasionally mentioned by researchers but rarely implemented by practitioners. This may be because the mathematics of these distributions is more technical than that of more familiar distributions. Perhaps distributions with undefined standard deviations are simply too counter-intuitive for most people. Modest research is ongoing.

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Related Internal Links

Brownian motion A simple continuous stochastic process that is widely used in physics and finance for modeling random behavior that evolves over time.

Cauchy distribution A bell-shaped distribution that is more peaked and has fatter tails than the normal distribution.

central limit theorem A theorem that explains why the normal distribution plays such an important role in probability theory.

joint normal distribution A multivariate distribution with normal marginal distributions.

kurtosis A parameter describing the peakedness and tails of a distribution.

linear polynomial of a random vector A random variable or random vector that is defined as a linear polynomial of a random vector.

normal distribution Perhaps the most important probability distribution for probability and statistics.

random walk A discrete stochastic process whose increments form a white noise.

random walk hypothesis Financial model based on the empirical observation that stock and commodity prices behave like a random walk.

standard deviation A parameter describing the dispersion of a distribution.

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Cited Papers

Levy, Paul (1925) Calcul des Probabilities, Paris: Gauthier-Villars.

Levy, Paul (1937) Theorie de L'addition des Variables Aleatoires, Paris: Gauthier-Villars.

Mandelbrot, Benoit B. (1963). The variation of certain speculative prices, Journal of Business, 36, 394-419. Reprinted in Cootner, Paul H. (1965). The Random Character of Stock Market Prices, Cambridge: MIT Press.

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