Multivariate log-skewed distributions with normal kernel and their applications |
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Authors: | Marina M. de Queiroz Rosangela H. Loschi |
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Affiliation: | Departamento de Estatística, Universidade Federal de Minas Gerais, 31270-901 – Belo Horizonte – MG, Brazil |
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Abstract: | We introduce two classes of multivariate log-skewed distributions with normal kernel: the log canonical fundamental skew-normal (log-CFUSN) and the log unified skew-normal. We also discuss some properties of the log-CFUSN family of distributions. These new classes of log-skewed distributions include the log-normal and multivariate log-skew normal families as particular cases. We discuss some issues related to Bayesian inference in the log-CFUSN family of distributions, mainly we focus on how to model the prior uncertainty about the skewing parameter. Based on the stochastic representation of the log-CFUSN family, we propose a data augmentation strategy for sampling from the posterior distributions. This proposed family is used to analyse the US national monthly precipitation data. We conclude that a high-dimensional skewing function lead to a better model fit. |
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Keywords: | skewed distributions data augmentation Bayesian inference |
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