Inference in flexible families of distributions with normal kernel |
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Authors: | Gustavo H.M.A. Rocha Reinaldo B. Arellano-Valle |
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Affiliation: | 1. Departamento de Estatística , Universidade Federal de Minas Gerais , 31270-901 , Belo Horizonte , MG , Brazil;2. Facultad de Matemáticas , Pontificia Universidad Catolica de Chile , Casilla 306, Santiago 22 , Chile |
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Abstract: | ![]() This paper addresses the inference problem for a flexible class of distributions with normal kernel known as skew-bimodal-normal family of distributions. We obtain posterior and predictive distributions assuming different prior specifications. We provide conditions for the existence of the maximum-likelihood estimators (MLE). An EM-type algorithm is built to compute them. As a by product, we obtain important results related to classical and Bayesian inferences for two special subclasses called bimodal-normal and skew-normal (SN) distribution families. We perform a Monte Carlo simulation study to analyse behaviour of the MLE and some Bayesian ones. Considering the frontier data previously studied in the literature, we use the skew-bimodal-normal (SBN) distribution for density estimation. For that data set, we conclude that the SBN model provides as good a fit as the one obtained using the location-scale SN model. Since the former is a more parsimonious model, such a result is shown to be more attractive. |
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Keywords: | Bayes estimator bimodality density estimation maximum likelihood skewness |
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