학술논문

Matrix variate generalized asymmetric laplace distributions
Document Type
Source
Theory of Probability and Mathematical Statistics. 109:55-80
Subject
Covariance mixture of Gaussian distributions
Distribution theory
Generalized asymmetric Laplace distribution
MatG distribution
Matrix gamma-normal distribution
Matrix variate distribution
Matrix variate gamma distribution
Matrix variate t distribution
Normal variancemean mixture
Variance gamma distribution
Naturvetenskap
Matematik
Sannolikhetsteori och statistik
Natural Sciences
Mathematics
Probability Theory and Statistics
Language
English
ISSN
0094-9000
Abstract
The generalized asymmetric Laplace (GAL) distributions, also known as the variance/mean-gamma models, constitute a popular flexible class of distributions that can account for peakedness, skewness, and heavier-than-normal tails, often observed in financial or other empirical data. We consider extensions of the GAL distribution to the matrix variate case, which arise as covariance mixtures of matrix variate normal distributions. Two different mixing mechanisms connected with the nature of the random scaling matrix are considered, leading to what we term matrix variate GAL distributions of Type I and II. While Type I matrix variate GAL distribution has been studied before, there is no comprehensive account of Type II in the literature, except for their rather brief treatment as a special case of matrix variate generalized hyperbolic distributions. With this work we fill this gap, and present an account for basic distributional properties of Type II matrix variate GAL distributions. In particular, we derive their probability density function and the characteristic function, as well as provide stochastic representations related to matrix variate gamma distribution. We also show that this distribution is closed under linear transformations, and study the relevant marginal distributions. In addition, we also briefly account for Type I and discuss the intriguing connections with Type II. We hope that this work will be useful in the areas where matrix variate distributions provide an appropriate probabilistic tool for three-way or, more generally, panel data sets, which can arise across different applications.