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 harmonium model


Unsupervised learning of distributions on binary vectors using two layer networks

Neural Information Processing Systems

We study a particular type of Boltzmann machine with a bipartite graph structure called a harmonium. Our interest is in using such a machine to model a probability distribution on binary input vectors. We analyze the class of probability distributions that can be modeled by such machines.


Unsupervised learning of distributions on binary vectors using two layer networks

Neural Information Processing Systems

We study a particular type of Boltzmann machine with a bipartite graph structure called a harmonium. Our interest is in using such a machine to model a probability distribution on binary input vectors. We analyze the class of probability distributions that can be modeled by such machines.


Unsupervised learning of distributions on binary vectors using two layer networks

Neural Information Processing Systems

We study a particular type of Boltzmann machine with a bipartite graph structure called a harmonium. Ourinterest is in using such a machine to model a probability distribution on binary input vectors. We analyze the class of probability distributions that can be modeled by such machines.