Variable Selection in Joint Location and Scale Models of the Skew-t-Normal Distribution |
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Authors: | Liu-Cang Wu |
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Affiliation: | 1. Faculty of Science, Kunming University of Science and Technology, Kunming, People’s Republic of Chinawuliucang@163.com |
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Abstract: | Variable selection is an important issue in all regression analysis, and in this article, we investigate the simultaneous variable selection in joint location and scale models of the skew-t-normal distribution when the dataset under consideration involves heavy tail and asymmetric outcomes. We propose a unified penalized likelihood method which can simultaneously select significant variables in the location and scale models. Furthermore, the proposed variable selection method can simultaneously perform parameter estimation and variable selection in the location and scale models. With appropriate selection of the tuning parameters, we establish the consistency and the oracle property of the regularized estimators. These estimators are compared by simulation studies. |
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Keywords: | Heteroscedastic regression models Joint location and scale models of the skew-t-normal distribution Penalized maximum likelihood estimator Skew-t-normal distribution (StN) Variable selection |
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