A Method for Simulating Nonnormal Distributions with SpecifiedL-Skew,L-Kurtosis, andL-Correlation
Author(s) -
Todd C. Headrick,
Mohan D. Pant
Publication year - 2012
Publication title -
isrn applied mathematics
Language(s) - English
Resource type - Journals
eISSN - 2090-5572
pISSN - 2090-5564
DOI - 10.5402/2012/980827
Subject(s) - kurtosis , skew , monte carlo method , mathematics , statistics , correlation , skewness , moment (physics) , skew normal distribution , autocorrelation , pearson product moment correlation coefficient , statistical physics , distribution (mathematics) , econometrics , computer science , physics , mathematical analysis , geometry , telecommunications , classical mechanics
This paper introduces two families of distributions referred to as the symmetric κ and asymmetric κL-κR distributions. The families are based on transformations of standard logistic pseudo-random deviates. The primary focus of the theoretical development is in the contexts of L-moments and the L-correlation. Also included is the development of a method for specifying distributions with controlled degrees of L-skew, L-kurtosis, and L-correlation. The method can be applied in a variety of settings such as Monte Carlo studies, simulation, or modeling events. It is also demonstrated that estimates of L-skew, L-kurtosis, and L-correlation are superior to conventional productmoment estimates of skew, kurtosis, and Pearson correlation in terms of both relative bias and efficiency when moderate-to-heavy-tailed distributions are of concern.
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