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Volumn 22, Issue 19, 2006, Pages 2348-2355

Gene selection in cancer classification using sparse logistic regression with Bayesian regularization

Author keywords

[No Author keywords available]

Indexed keywords

ANALYTICAL ERROR; ANALYTICAL PARAMETERS; ARTICLE; BAYES THEOREM; CANCER CLASSIFICATION; COLON CANCER; CONTROLLED STUDY; ENTROPY; GENETIC ALGORITHM; GENETIC SELECTION; INTERMETHOD COMPARISON; LEARNING; LEUKEMIA; LOGISTIC REGRESSION ANALYSIS; MACHINE; MATHEMATICAL COMPUTING; PRIORITY JOURNAL; PROBABILITY; STATISTICAL MODEL;

EID: 33750012146     PISSN: 13674803     EISSN: 13674811     Source Type: Journal    
DOI: 10.1093/bioinformatics/btl386     Document Type: Article
Times cited : (226)

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