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Statistics / Probability / Machine learning / Statistical natural language processing / Statistical models / Markov models / Probability distributions / Latent Dirichlet allocation / Dirichlet distribution / Topic model / Mixture model / Gibbs sampling
Date: 2014-12-16 12:40:25
Statistics
Probability
Machine learning
Statistical natural language processing
Statistical models
Markov models
Probability distributions
Latent Dirichlet allocation
Dirichlet distribution
Topic model
Mixture model
Gibbs sampling

Learning Semantic Representations with Hidden Markov Topics Models Mark Andrews () Gabriella Vigliocco () Cognitive, Perceptual and Brain Sciences University College London,

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