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Estimation theory / Machine learning / Bioinformatics / Hidden Markov model / Markov chain / Mixture model / Baum–Welch algorithm / Expectation–maximization algorithm / Speech recognition / Statistics / Markov models / Probability and statistics
Date: 2011-10-29 17:56:25
Estimation theory
Machine learning
Bioinformatics
Hidden Markov model
Markov chain
Mixture model
Baum–Welch algorithm
Expectation–maximization algorithm
Speech recognition
Statistics
Markov models
Probability and statistics

Sparseness Achievement in Hidden Markov Models Manuele Bicego∗ DEIR - University of Sassari via Torre Tonda, [removed]Sassari - Italy

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