Robust estimation of the number of components for mixtures of linear regression

Date

2014-06-17

Authors

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

In this report, we investigate a robust estimation of the number of components in the mixture of regression models using trimmed information criterion. Compared to the traditional information criterion, the trimmed criterion is robust and not sensitive to outliers. The superiority of the trimmed methods in comparison with the traditional information criterion methods is illustrated through a simulation study. A real data application is also used to illustrate the effectiveness of the trimmed model selection methods.

Description

Keywords

Mixture of linear regression models, Model selection, Robustness, Trimmed likelihood estimator

Graduation Month

August

Degree

Master of Science

Department

Department of Statistics

Major Professor

Weixin Yao

Date

2014

Type

Report

Citation