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arxiv: 1507.02074 · v2 · pith:6PZUT46Dnew · submitted 2015-07-08 · 🧮 math.ST · stat.ME· stat.TH

On Bayesian robust regression with diverging number of predictors

classification 🧮 math.ST stat.MEstat.TH
keywords m-estimatorsnumberbayesbayesianestimatoreuclideanmixturemodel
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This paper concerns the robust regression model when the number of predictors and the number of observations grow in a similar rate. Theory for M-estimators in this regime has been recently developed by several authors [El Karoui et al., 2013, Bean et al., 2013, Donoho and Montanari, 2013]. Motivated by the inability of M-estimators to successfully estimate the Euclidean norm of the coefficient vector, we consider a Bayesian framework for this model. We suggest a two-component mixture of normals prior for the coefficients and develop a Gibbs sampler procedure for sampling from relevant posterior distributions, while utilizing a scale mixture of normal representation for the error distribution . Unlike M-estimators, the proposed Bayes estimator is consistent in the Euclidean norm sense. Simulation results demonstrate the superiority of the Bayes estimator over traditional estimation methods.

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