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Bayesian statistics / Kullback–Leibler divergence / Thermodynamics / Normal distribution / Principle of maximum entropy / Convex optimization / Expectation–maximization algorithm / Entropy / Maximum entropy probability distribution / Statistics / Probability and statistics / Statistical theory
Date: 2015-02-17 20:52:05
Bayesian statistics
Kullback–Leibler divergence
Thermodynamics
Normal distribution
Principle of maximum entropy
Convex optimization
Expectation–maximization algorithm
Entropy
Maximum entropy probability distribution
Statistics
Probability and statistics
Statistical theory

STAT 538 Lecture 8 Maximum Entropy Models c Marina Meil˘a

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