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Examining Measure Correlations With Incomplete Data Sets
Authors:Tenko Raykov  Brooke C Schneider  George A Marcoulides  Peter A Lichtenberg
Institution:1. Michigan State Universityraykov@msu.edu;3. VA Health Care System, West Los Angeles;4. University of California, Santa Barbara;5. Wayne State University
Abstract:A 2-stage procedure for estimation and testing of observed measure correlations in the presence of missing data is discussed. The approach uses maximum likelihood for estimation and the false discovery rate concept for correlation testing. The method can be used in initial exploration-oriented empirical studies with missing data, where it is of interest to estimate manifest variable interrelationship indexes and test hypotheses about their population values. The procedure is applicable also with violations of the underlying missing at random assumption, via inclusion of auxiliary variables. The outlined approach is illustrated with data from an aging research study.
Keywords:auxiliary variable  correlation  false discovery rate  incomplete data  missing at random
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