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Markov Property in Generative Classifiers

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arxiv 1811.04759 v1 pith:A66MQR4O submitted 2018-11-12 cs.LG stat.ML

Markov Property in Generative Classifiers

classification cs.LG stat.ML
keywords classifiersgenerativeconstraintsfunctionsmarkovdiscriminationlinearproperty
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We show that, for generative classifiers, conditional independence corresponds to linear constraints for the induced discrimination functions. Discrimination functions of undirected Markov network classifiers can thus be characterized by sets of linear constraints. These constraints are represented by a second order finite difference operator over functions of categorical variables. As an application we study the expressive power of generative classifiers under the undirected Markov property and we present a general method to combine discriminative and generative classifiers.

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