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Statistics / Probability / Maximum likelihood estimation / Probability distributions / Bayesian statistics / Expectationmaximization algorithm / Mixture model / Normal distribution / K-means clustering / Likelihood function / Data stream clustering / Gamma distribution
Date: 2012-05-15 11:47:37
Statistics
Probability
Maximum likelihood estimation
Probability distributions
Bayesian statistics
Expectationmaximization algorithm
Mixture model
Normal distribution
K-means clustering
Likelihood function
Data stream clustering
Gamma distribution

Scalable Training of Mixture Models via Coresets Dan Feldman MIT Matthew Faulkner

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