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Markov models / Estimation theory / Bioinformatics / Hidden Markov model / Levenshtein distance / Expectation–maximization algorithm / Cross-validation / Mixture model / Statistics / Machine learning / Dynamic programming
Date: 2007-11-01 18:56:14
Markov models
Estimation theory
Bioinformatics
Hidden Markov model
Levenshtein distance
Expectation–maximization algorithm
Cross-validation
Mixture model
Statistics
Machine learning
Dynamic programming

A Generative Model for Rhythms Yves Grandvalet CNRS

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