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Statistics / Geometry / Statistical distance / Estimation theory / Statistical theory / Bregman divergence / Divergence / Expectationmaximization algorithm / Exponential family / KullbackLeibler divergence / Variational Bayesian methods
Date: 2015-07-31 19:00:25
Statistics
Geometry
Statistical distance
Estimation theory
Statistical theory
Bregman divergence
Divergence
Expectationmaximization algorithm
Exponential family
KullbackLeibler divergence
Variational Bayesian methods

That was fast! Speeding up NN search of high dimensional distributions.

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