Bayesian inference of pair-copula constriction for multivariate dependency modeling of iran's macroeconomic variables

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Abstract

Bayesian inference of pair-copula constriction (PCC) is used for multivariate dependency modeling of Iran's macroeconomics variables: oil revenue, economic growth, total consumption and investment. These constructions are based on bivariate t-copulas as building blocks and can model the nature of extreme events in bivariate margins individually. The model parameter was estimated based on Markov chain Monte Carlo (MCMC) methods. A MCMC algorithm reveals unconditional as well as conditional independence in Iran's macroeconomic variables, which can simplify resulting PCC's for these data. © 2013 JMASM, Inc.

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Zadkarami, M. R., & Chatrabgoun, O. (2013). Bayesian inference of pair-copula constriction for multivariate dependency modeling of iran’s macroeconomic variables. Journal of Modern Applied Statistical Methods, 12(1), 227–234. https://doi.org/10.22237/jmasm/1367382240

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