An Operational (Preasymptotic) Measure of Fat-tailedness

02/15/2018
by   Nassim Nicholas Taleb, et al.
0

This note presents an operational measure of fat-tailedness for univariate probability distributions, in [0,1] where 0 is maximally thin-tailed (Gaussian) and 1 is maximally fat-tailed. Among others,1) it helps assess the sample size needed to establish a comparative n needed for statistical significance, 2) allows practical comparisons across classes of fat-tailed distributions, 3) helps understand some inconsistent attributes of the lognormal, pending on the parametrization of its scale parameter. The literature is rich for what concerns asymptotic behavior, but there is a large void for finite values of n, those needed for operational purposes. Conventional measures of fat-tailedness, namely 1) the tail index for the power law class, and 2) Kurtosis for finite moment distributions fail to apply to some distributions, and do not allow comparisons across classes and parametrization, that is between power laws outside the Levy-Stable basin, or power laws to distributions in other classes, or power laws for different number of summands. How can one compare a sum of 100 Student T distributed random variables with 3 degrees of freedom to one in a Levy-Stable or a Lognormal class? How can one compare a sum of 100 Student T with 3 degrees of freedom to a single Student T with 2 degrees of freedom? We propose an operational and heuristic measure that allow us to compare n-summed independent variables under all distributions with finite first moment. The method is based on the rate of convergence of the Law of Large numbers for finite sums, n-summands specifically. We get either explicit expressions or simulation results and bounds for the lognormal, exponential, Pareto, and the Student T distributions in their various calibrations --in addition to the general Pearson classes.

READ FULL TEXT

page 1

page 3

research
02/01/2023

Fitting the Distribution of Linear Combinations of t-Variables with more than 2 Degrees of Freedom

The linear combination of Student's t random variables (RVs) appears in ...
research
10/03/2019

The effects of degrees of freedom estimation in the Asymmetric GARCH model with Student-t Innovations

This work investigates the effects of using the independent Jeffreys pri...
research
01/24/2020

Statistical Consequences of Fat Tails: Real World Preasymptotics, Epistemology, and Applications

The book investigates the misapplication of conventional statistical tec...
research
05/13/2019

Sub-Weibull distributions: generalizing sub-Gaussian and sub-Exponential properties to heavier-tailed distributions

We propose the notion of sub-Weibull distributions, which are characteri...
research
04/05/2022

Theoretical properties of Bayesian Student-t linear regression

Student-t linear regression is a commonly used alternative to the normal...
research
06/14/2018

On the heavy-tail behavior of the distributionally robust newsvendor

Since the seminal work of Scarf (1958) [A min-max solution of an invento...
research
12/20/2020

Independent Approximates enable closed-form estimation of heavy-tailed distributions

Independent Approximates (IAs) are proven to enable a closed-form estima...

Please sign up or login with your details

Forgot password? Click here to reset