Testing homogeneity in discrete mixtures |
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Authors: | Richard Charnigo Jiayang Sun |
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Affiliation: | 1. Department of Statistics, University of Kentucky, 851 Patterson Office Tower, Lexington, KY 40506-0027, USA;2. Case Western Reserve University, USA |
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Abstract: | This paper introduces W-tests for assessing homogeneity in mixtures of discrete probability distributions. A W-test statistic depends on the data solely through parameter estimators and, if a penalized maximum likelihood estimation framework is used, has a tractable asymptotic distribution under the null hypothesis of homogeneity. The large-sample critical values are quantiles of a chi-square distribution multiplied by an estimable constant for which we provide an explicit formula. In particular, the estimation of large-sample critical values does not involve simulation experiments or random field theory. We demonstrate that W-tests are generally competitive with a benchmark test in terms of power to detect heterogeneity. Moreover, in many situations, the large-sample critical values can be used even with small to moderate sample sizes. The main implementation issue (selection of an underlying measure) is thoroughly addressed, and we explain why W-tests are well-suited to problems involving large and online data sets. Application of a W-test is illustrated with an epidemiological data set. |
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Keywords: | D-test Generalized D-test L2 distance Mixture distribution W-test |
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