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Some sampling effects of pairwise correlated observations on likelihood ratio tests for the difference between two means
Authors:Nicholas J. Schork  M. Anthony Schork
Affiliation:1. Department of Medicine Department of Epidemiology , University of Michigan , Ann Arbor, Michigan, 48109R6592 Kresge I Box 0500;2. Department of Biostatistics School of Public Health , University of Michigan , Ann Arbor, Michigan, 48109M4507 SPH II Box 2029
Abstract:We study the effects of the inclusion of pairs of correlated observations in a sample on likelihood ratio tests for the difference in two means. In particular, we assess how the inclusion of correlated data pairs (e.g., such as data inadvertently collected from sib-pairs) affects the sample size requirements necessary for the implementation of a Likelihood Ratio (LR) test for the difference between two means. Our results suggest that correlated data pairs beneficially or adversely effect sample size requirements for an LR test to a degree functionally related to the mixture parameters dictating their relative frequencies in the larger sample on which the test will be performed, the strength of the correlation between the observations, and the size of imbalances in the sample with respect to the number of observations in each group. The relevance and implications of the results for genetic and epidemiologic research are discussed.
Keywords:correlated observations  variance components  sample size estimation  power  sex differences  two sample tests
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