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2021
Journal Article
Titel
Discriminative Alignment of Projected Belief Networks
Abstract
The projected belief network (PBN) is a deep layered generative network with tractable likelihood function (LF) and can be used as a Bayesian classifier by training a separate model on each data class, and classifying based on maximum likelihood (ML). Unlike other generative models with tractable LF, the PBN can share an embodiment with a feed-forward classifier network. By training a PBN with a cost function that combines LF with classifier cross-entropy, its network weights can be ""aligned"" to the decision boundaries separating the data class from other classes. This results in a Bayesian classifier that rivals state of the art discriminative classifiers. These claims are backed up by classification experiments involving spectrograms of spoken keywords and handwritten characters.