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A Robust Variable Selection to t-type Joint Generalized Linear Models via Penalized t-type Pseudo-likelihood
Authors:Liu-Cang Wu  Zhong-Zhan Zhang  Guo-Liang Tian  Deng-Ke Xu
Affiliation:1. Faculty of Science, Kunming University of Science and Technology, Kunming, P.R. China;2. College of Applied Sciences, Beijing University of Technology, Beijing, P.R. China;3. Department of Statistics and Actuarial Science, The University of Hong Kong, Hong Kong, P.R. China
Abstract:
Although the t-type estimator is a kind of M-estimator with scale optimization, it has some advantages over the M-estimator. In this article, we first propose a t-type joint generalized linear model as a robust extension to the classical joint generalized linear models for modeling data containing extreme or outlying observations. Next, we develop a t-type pseudo-likelihood (TPL) approach, which can be viewed as a robust version to the existing pseudo-likelihood (PL) approach. To determine which variables significantly affect the variance of the response variable, we then propose a unified penalized maximum TPL method to simultaneously select significant variables for the mean and dispersion models in t-type joint generalized linear models. Thus, the proposed variable selection method can simultaneously perform parameter estimation and variable selection in the mean and dispersion models. With appropriate selection of the tuning parameters, we establish the consistency and the oracle property of the regularized estimators. Simulation studies are conducted to illustrate the proposed methods.
Keywords:Joint generalized linear models  Penalized maximum t-type pseudo-likelihood estimator  t-type pseudo-likelihood  Variable selection
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