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A memetic algorithm for gene selection and molecular classification of cancer
Author(s) -
Béatrice Duval,
JinKao Hao,
José Crispín Hernández Hernández
Publication year - 2009
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/1569901.1569930
Subject(s) - memetic algorithm , selection (genetic algorithm) , gene selection , computer science , computational biology , artificial intelligence , gene , algorithm , biology , genetics , local search (optimization) , gene expression , microarray analysis techniques
Choosing a small subset of genes that enables a good classification of diseases on the basis of microarray data is a difficult optimization problem. This paper presents a memetic algorithm, called MAGS, to deal with gene selection for supervised classification of microarray data. MAGS is based on an embedded approach for attribute selection where a classifier tightly interacts with the selection process. The strength of MAGS relies on the synergy created by combining a problem specific crossover operator and a dedicated local search procedure, both being guided by relevant information from a SVM classifier. Computational experiments on 8 well-known microarray datasets show that our memetic algorithm is very competitive compared with some recently published studies

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