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Statistics / Probability / Machine learning / Markov models / Statistical models / Bioinformatics / Estimation theory / Graph theory / Markov chain / Dynamic programming / Bayesian network / Sequence motif
Date: 2008-10-22 02:35:22
Statistics
Probability
Machine learning
Markov models
Statistical models
Bioinformatics
Estimation theory
Graph theory
Markov chain
Dynamic programming
Bayesian network
Sequence motif

Vol. 24 ECCB 2008, pages i160–i166 doi:bioinformatics/btn282 BIOINFORMATICS Efficient representation and P-value computation for

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