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Fisher information / Kullback–Leibler divergence / Fisher kernel / Likelihood function / Linear classifier / Supervised learning / Score / Dimensional analysis / Maximum likelihood / Statistics / Estimation theory / Expectation–maximization algorithm
Date: 2011-07-22 17:05:55
Fisher information
Kullback–Leibler divergence
Fisher kernel
Likelihood function
Linear classifier
Supervised learning
Score
Dimensional analysis
Maximum likelihood
Statistics
Estimation theory
Expectation–maximization algorithm

Hybrid Generative-Discriminative Classification using Posterior Divergence Xiong Li Shanghai Jiao Tong University Shanghai, 200240, China Tai Sing Lee

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Source URL: www.cnbc.cmu.edu

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