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Machine learning / Statistical theory / Cross-validation / Model selection / Expectation–maximization algorithm / Maximum likelihood / Naive Bayes classifier / Validation / Linear discriminant analysis / Statistics / Estimation theory / Statistical classification
Date: 2014-10-17 06:59:26
Machine learning
Statistical theory
Cross-validation
Model selection
Expectation–maximization algorithm
Maximum likelihood
Naive Bayes classifier
Validation
Linear discriminant analysis
Statistics
Estimation theory
Statistical classification

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