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BIOINFORMATICS
2004
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BIOINFORMATICS 2004
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Training HMM structure with genetic algorithm for biological sequence analysis
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Kyoung-Jae Won, Adam Prügel-Bennett, Anders K
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Added
16 Dec 2010
Updated
16 Dec 2010
Type
Journal
Year
2004
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BIOINFORMATICS
Authors
Kyoung-Jae Won, Adam Prügel-Bennett, Anders Krogh
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