Using Finite Mixture Modeling to Deal with Systematic Measurement Error: A Case Study
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May 1, 2011
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Min Liu
University of Hawaii
Gregory R. Hancock
University of Maryland
Jeffrey R. Harring
University of Maryland
Abstract
Conventional methods and analyses view measurement error as random. A scenario is presented where a variable was measured with systematic error. Mixture models with systematic parameter constraints were used to test hypotheses in the context of general linear models; this accommodated the heterogeneity arising due to systematic measurement error.
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