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Probability / Bioinformatics / Hidden Markov model / Maximum-entropy Markov model / Part-of-speech tagging / Viterbi algorithm / Conditional random field / DICT / Precision and recall / Statistics / Markov models / Probability and statistics
Date: 2005-03-17 15:21:31
Probability
Bioinformatics
Hidden Markov model
Maximum-entropy Markov model
Part-of-speech tagging
Viterbi algorithm
Conditional random field
DICT
Precision and recall
Statistics
Markov models
Probability and statistics

Microsoft Word - paper-ISMB_revised-zkou.doc

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