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Boltzmann machine / Statistical models / Helmholtz machine / Wake-sleep algorithm / Kullback–Leibler divergence / Supervised learning / Generative model / Expectation–maximization algorithm / Generative / Statistics / Neural networks / Machine learning
Date: 2008-10-06 03:08:39
Boltzmann machine
Statistical models
Helmholtz machine
Wake-sleep algorithm
Kullback–Leibler divergence
Supervised learning
Generative model
Expectation–maximization algorithm
Generative
Statistics
Neural networks
Machine learning

Communicated by Michael Jordan The Helmholtz Machine

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