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Classification with discrete and continuous variables via general mixed-data models
Authors:A R de Leon  A Soo  T Williamson
Institution:1. Department of Mathematics &2. Statistics , University of Calgary , Calgary, AB, Canada;3. Department of Community Health Sciences , University of Calgary , Calgary, AB, Canada
Abstract:We study the problem of classifying an individual into one of several populations based on mixed nominal, continuous, and ordinal data. Specifically, we obtain a classification procedure as an extension to the so-called location linear discriminant function, by specifying a general mixed-data model for the joint distribution of the mixed discrete and continuous variables. We outline methods for estimating misclassification error rates. Results of simulations of the performance of proposed classification rules in various settings vis-à-vis a robust mixed-data discrimination method are reported as well. We give an example utilizing data on croup in children.
Keywords:error rate  general location model  grouped continuous model  maximum likelihood  measurement level  minimum distance probability  misclassification probability  plug-in estimates
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