Testing for normality in linear regression models using regression and scale equivariant estimators

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Abstract

In this paper we provide a general solution to the problem of controlling the probability of a type I error in normality tests for the disturbances in linear regressions when using robust-regression residuals. We show that many classes of well-known robust regression estimators belong to the class of regression and scale equivariant estimators. It is these equivariance properties that are used to reduce the nuisance parameter space under the null, from which we develop Monte Carlo and Maximized Monte Carlo tests for the null of disturbance normality. Finally, we illustrate in a simulation experiment the potential power gains from using robust-regression residuals in testing this null hypothesis.

Original languageEnglish
Pages (from-to)192-196
Number of pages5
JournalEconomics Letters
Volume122
Issue number2
DOIs
Publication statusPublished - Feb 2014
Externally publishedYes

Keywords

  • Linear regression
  • Monte Carlo test
  • Normality test
  • Regression and scale equivariant estimators

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