Generative models for similarity-based classification

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摘要

A maximum-entropy approach to generative similarity-based classifiers model is proposed. First, a descriptive set of similarity statistics is assumed to be sufficient for classification. Then the class-conditional distributions of these descriptive statistics are estimated as the maximum-entropy distributions subject to empirical moment constraints. The resulting exponential class-conditional distributions are used in a maximum a posteriori decision rule, forming the similarity discriminant analysis (SDA) classifier. Simulated and real data experiments compare performance to the k-nearest neighbor classifier, the nearest-centroid classifier, and the potential support vector machine (PSVM).

论文关键词:Similarity,Maximum entropy,Discriminant analysis

论文评审过程:Received 13 June 2007, Revised 26 October 2007, Accepted 8 January 2008, Available online 18 January 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.01.005