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Normal/Independent Distributions and Their Applications in Robust Regression
Authors:Kenneth Lange  Janet S Sinsheimer
Institution:Department of Biomathematics , School of Medicine, University of California, Los Angeles , Los Angeles , CA , 90024 , USA
Abstract:Abstract

Maximum likelihood estimation with nonnormal error distributions provides one method of robust regression. Certain families of normal/independent distributions are particularly attractive for adaptive, robust regression. This article reviews the properties of normal/independent distributions and presents several new results. A major virtue of these distributions is that they lend themselves to EM algorithms for maximum likelihood estimation. EM algorithms are discussed for least Lp regression and for adaptive, robust regression based on the t, slash, and contaminated normal families. Four concrete examples illustrate the performance of the different methods on real data.
Keywords:EM algorithm  Normal/independent distribution  Robust regression
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