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Statistical models / Computational statistics / Boltzmann machine / Regression analysis / Backpropagation / Stochastic gradient descent / Generative model / Bayesian network / Sampling / Statistics / Neural networks / Machine learning
Date: 2010-08-02 08:08:16
Statistical models
Computational statistics
Boltzmann machine
Regression analysis
Backpropagation
Stochastic gradient descent
Generative model
Bayesian network
Sampling
Statistics
Neural networks
Machine learning

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