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Published byGriffin Welch Modified over 9 years ago
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Deep Boltzman machines Paper by : R. Salakhutdinov, G. Hinton Presenter : Roozbeh Gholizadeh
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Outline Problems with some other methods! Energy based models Boltzmann machine Restricted Boltzmann machine Deep Boltzmann machine
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Problems with other methods! Supervised learning need labeled data. Amount of information restricted by labels! Finding and knowing abnormalities before ever seeing them such as some conditions in a nuclear power plant. So Instead of learning p(label | data) learn p(data)
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Energy Based Models
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Boltzmann machine Markov random field (MRF) with hidden variables. Undirected edges representing dependency. Weights can be assigned.
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Conditional distributions over hidden and visible units:
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Learning process Parameters update: Exact maximum likelihood learning is intractable. Use Gibbs sampling to approximate. Run 2 separate Markov chains to approximate them.
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Boltzman Machine Learning Procedure
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Restricted Boltzmann Machine
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Stochastic approximation procedure (SAP)
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Why go deep?
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Deep architectures are representationally efficient, fewer computational units for same function. Allow for showing a hierarchy. Non-local generalization Easier to monitor what is being learn and guide the machine.
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Deep Boltzmann Machine Undirected connection between all layers. Conditional distributions over visible and hidden:”
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Pretraining (greedy layerwise)
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MNIST dataset
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NORB Misclassification Error rate: DBM : 10.8%, SVM:11.6%, logistic regression: 22.5%, K-nearest neighbors : 18.4%
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Thank you!
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