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Statistics / Probability / Statistical theory / Probability distributions / Statistical models / Bayesian statistics / Stochastic processes / Graphical models / Bayesian network / Gibbs sampling / Dirichlet process / Mixture model
Date: 2008-08-08 22:07:31
Statistics
Probability
Statistical theory
Probability distributions
Statistical models
Bayesian statistics
Stochastic processes
Graphical models
Bayesian network
Gibbs sampling
Dirichlet process
Mixture model

Learning stick-figure models using nonparametric Bayesian priors over trees Edward W. Meeds, David A. Ross, Richard S. Zemel, and Sam T. Roweis Department of Computer Science University of Toronto {ewm, dross, zemel, row

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