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Robust estimation and variable selection in heteroscedastic linear regression

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ABSTRACT The paper concerns robust estimation and variable selection in heteroscedastic linear regression models. After a brief review of existing methods for estimation in such models, a robust S-estimation approach… Click to show full abstract

ABSTRACT The paper concerns robust estimation and variable selection in heteroscedastic linear regression models. After a brief review of existing methods for estimation in such models, a robust S-estimation approach is discussed. For all methods concise descriptions of algorithms are provided. Little is available upon robust variable selection methods for heteroscedastic linear models. The paper gives essential contributions in the area of simultaneous robust estimation and variable selection, relying on basics of the nonnegative garrote method which has been proven to have very good practical as well as theoretical properties in the homoscedastic linear model context. Several numerical examples, simulations and analysis of real data, demonstrate the performances and practical use of the discussed methods. Moreover, we provide expressions for the influence functions of the estimators of the mean and the error variance parameters. Influence functions are plotted in a simple setting providing insights in the sensitivity of the estimators for a single outlying observation.

Keywords: robust estimation; estimation; estimation variable; heteroscedastic linear; variable selection

Journal Title: Statistics
Year Published: 2019

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