Published in

Taylor & Francis (Routledge), Journal of Applied Statistics, 12(35), p. 1409-1422

DOI: 10.1080/02664760802382475

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On adaptive linear regression

Journal article published in 2008 by Arnab Maity ORCID, Michael Sherman
This paper is available in a repository.
This paper is available in a repository.

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Abstract

Ordinary least squares (OLS) is omnipresent in regression modeling. Occasionally, least absolute deviations (LAD) or other methods are used as an alternative when there are outliers. Although some data adaptive estimators have been proposed, they are typically difficult to implement. In this paper, we propose an easy to compute adaptive estimator which is simply a linear combination of OLS and LAD. We demonstrate large sample normality of our estimator and show that its performance is close to best for both light-tailed (e.g. normal and uniform) and heavy-tailed (e.g. double exponential and t3) error distributions. We demonstrate this through three simulation studies and illustrate our method on state public expenditures and lutenizing hormone data sets. We conclude that our method is general and easy to use, which gives good efficiency across a wide range of error distributions.