Asian Journal of Information Technology

Year: 2014
Volume: 13
Issue: 12
Page No. 761 - 769

Cooperative Parallel Multi-Objective Genetic Algorithm for Gene Feature Selection to Diagnose Breast Cancer

Authors : A. Natarajan and T. Ravi

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