Authors
Tomasz J Kozubowski, Krzysztof Podgórski, Igor Rychlik
Publication date
2013/1/1
Journal
Journal of Multivariate Analysis
Volume
113
Pages
59-72
Publisher
Academic Press
Description
Multivariate Laplace distribution is an important stochastic model that accounts for asymmetry and heavier than Gaussian tails, while still ensuring the existence of the second moments. A Lévy process based on this multivariate infinitely divisible distribution is known as Laplace motion, and its marginal distributions are multivariate generalized Laplace laws. We review their basic properties and discuss a construction of a class of moving average vector processes driven by multivariate Laplace motion. These stochastic models extend to vector fields, which are multivariate both in the argument and the value. They provide an attractive alternative to those based on Gaussianity, in presence of asymmetry and heavy tails in empirical data. An example from engineering shows modeling potential of this construction.
Total citations
201320142015201620172018201920202021202220232024156915891210111313
Scholar articles
TJ Kozubowski, K Podgórski, I Rychlik - Journal of Multivariate Analysis, 2013