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Umvu estimators for the population mean and variance based on random effects models for lognormal data
Authors:Robert H Lyles  Lawrence L Kupper
Institution:1. Department of Epidemiology, School of Hygiene and Public Health , The Johns Hopkins University , Room E-7007, 615 N. Wolfe St., Baltimore , MD , 21205;2. Department of Biostatistics, School of Public Health , The University of North Carolina at Chapel Hill , Chapel Hill , NC , 27599-7400
Abstract:Cross-classified data are often obtained in controlled experimental situations and in epidemiologic studies. As an example of the latter, occupational health studies sometimes require personal exposure measurements on a random sample of workers from one or more job groups, in one or more plant locations, on several different sampling dates. Because the marginal distributions of exposure data from such studies are generally right-skewed and well-approximated as lognormal, researchers in this area often consider the use of ANOVA models after a logarithmic transformation. While it is then of interest to estimate original-scale population parameters (e.g., the overall mean and variance), standard candidates such as maximum likelihood estimators (MLEs) can be unstable and highly biased. Uniformly minimum variance unbiased (UMVU) cstiniators offer a viable alternative, and are adaptable to sampling schemes that are typiral of experimental or epidemiologic studies. In this paper, we provide UMVU estimators for the mean and variance under two random effects ANOVA models for logtransformed data. We illustrate substantial mean squared error gains relative to the MLE when estimating the mean under a one-way classification. We illustrate that the results can readily be extended to encompass a useful class of purely random effects models, provided that the study data are balanced.
Keywords:analysis of variance  hypergeometric functions  occupational epidemiology  variance components
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