Prior elicitation in the classification problem |
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Authors: | Craig A. Cooleyd Steven N. Maceachern |
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Abstract: | Results are developed concerning the asymptotic behaviour of the Bayes classification rule as the number of unclassified observations grows without bound. It is shown that unclassified observations serve only to estimate the individual population parameters in an unlabeled sense and do not provide information about the labels that are attached to the populations. Prior construction is approached through investigation of prior odds over regions of the joint parameter space (across all populations) deemed likely to contain the true joint parameter vector. It is shown that consideration of these prior odds can lead to more robust a posteriori classification of individual observations. |
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Keywords: | Unclassified observations mixture models prior odds Gibbs sampling inconsistency discriminant analysis |
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