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Abstract Details

Activity Number: 642
Type: Topic Contributed
Date/Time: Thursday, August 2, 2012 : 10:30 AM to 12:20 PM
Sponsor: Section on Nonparametric Statistics
Abstract - #305122
Title: Adaptive Robust Regression with Infinite Gaussian Scale Mixture Errors
Author(s): Byungtae Seo*+ and Taewook Lee and Youngjoo Yoon
Companies: Sungkyunkwan University and Hankuk University of Foreign Studies and Konkuk University
Address: Department of Statistics, Seoul, International, , South Korea
Keywords: Robust regression ; Adaptive estimation ; Gaussian mixtures
Abstract:

Model based regression analysis always requires a certain choice of models which typically specifies the behavior of regression errors. The normal distribution is the most common choice for this purpose, but the estimator under normality is known to be too sensitive to outliers. As an alternative, heavy tailed distributions such as t distributions have been suggested. However, though this choice can reduce the sensitivity to outliers, it also requires the choice of distributions and tuning parameters for practical use. In this talk, we propose a class of infinite Gaussian scale mixtures for the error distribution that contains most symmetric unimodal probability distributions including normal, t, Laplace, and stable distributions. With this quite flexible class of error distributions, we discuss the robustness of the proposed method, and show its successes along with numerical examples.


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