Robust mixture regression models using t-distribution

Date

2012-08-01

Authors

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

In this report, we propose a robust mixture of regression based on t-distribution by extending the mixture of t-distributions proposed by Peel and McLachlan (2000) to the regression setting. This new mixture of regression model is robust to outliers in y direction but not robust to the outliers with high leverage points. In order to combat this, we also propose a modified version of the proposed method, which fits the mixture of regression based on t-distribution to the data after adaptively trimming the high leverage points. We further propose to adaptively choose the degree of freedom for the t-distribution using profile likelihood. The proposed robust mixture regression estimate has high efficiency due to the adaptive choice of degree of freedom. We demonstrate the effectiveness of the proposed new method and compare it with some of the existing methods through simulation study.

Description

Keywords

EM algorithm, Mixture regression models, Outliers, Robust regression, T-distribution

Graduation Month

August

Degree

Master of Science

Department

Department of Statistics

Major Professor

Weixin Yao

Date

2012

Type

Report

Citation