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Protection against outliers in empirical bayes estimation
Authors:Patrick J Farrell  Brenda Macgibbon  Thomas J Tomberlin
Abstract:The proven optimality properties of empirical Bayes estimators and their documented successful performance in practice have made them popular. Although many statisticians have used these estimators since the landmark paper of James and Stein (1961), relatively few have proposed techniques for protecting them from the effects of outlying observations or outlying parameters. One notable series of studies in protection against outlying parameters was conducted by Efron and Morris (1971, 1972, 1975). In the fully Bayesian case, a general discussion on robust procedures can be found in Berger (1984, 1985). Here we implement and evaluate a different approach for outlier protection in a random-effects model which is based on appropriate specification of the prior distribution. When unusual parameters are present, we estimate the prior as a step function, as suggested by Laird and Louis (1987). This procedure is evaluated empirically, using a number of simulated data sets to compare the effects of the step-function prior with those of the normal and Laplace priors on the prediction of small-area proportions.
Keywords:Empirical Bayes estimation  logistic regression  random-effects models  outliers  normal prior  Laplace prior  step-function prior  nonparametric maximum-likelihood estimation  small-area estimation    Primary 62D05  secondary 62F15  
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