Bayesian Inference in Multivariate Stable Distributions
41 Pages Posted: 10 Feb 2013
Date Written: February 10, 2013
Abstract
In this paper we take up Bayesian inference in general, multivariate stable distributions. We use approximate Bayesian computation (ABC) along with carefully crafted proposal distributions for the implementation of MCMC. The problem of selecting summary statistics in ABC is resolved through the use of the characteristic function. Two important problems in multivariate stable distributions are: (i) the selection of an optimal conguration of the grid points where the empirical and theoretical characteristic functions are compared, and (ii) the estimation of the spectral measure through which the distributions are dened in Rd. The problems are resolved successfully and certain new approximations to the spectral measure are proposed and implemented. Efficient proposal/importance distributions are constructed, and tested thoroughly, to ensure good performance in connection with ABC. The new techniques are applied to exchange rate and stock return data and are supplemented by Monte Carlo simulations. In addition, critical values are provided for a closeness statistic between the empirical and theoretical characteristic functions, resolving successfully another major problem in ABC-related inference.
Keywords: Bayesian inference, multivariate stable distributions, MCMC
JEL Classification: C11, C13
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