articleJan 1, 2008Closed access

Training restricted Boltzmann machines using approximations to the likelihood gradient

University of Toronto

Indexed incrossref

Abstract

A new algorithm for training Restricted Boltzmann Machines is introduced. The algorithm, named Persistent Contrastive Divergence, is different from the standard Contrastive Divergence algorithms in that it aims to draw samples from almost exactly the model distribution. It is compared to some standard Contrastive Divergence and Pseudo-Likelihood algorithms on the tasks of modeling and classifying various types of data. The Persistent Contrastive Divergence algorithm outperforms the other algorithms, and is equally fast and simple.

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1

Topics & keywords

Keywords
  • Divergence (linguistics)
  • Boltzmann machine
  • Computer science
  • Algorithm
  • Simple (philosophy)
  • Restricted Boltzmann machine
  • Artificial intelligence
  • Boltzmann constant
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