Feature selection methods for classification of gene expression profiles

نویسندگان

  • Michael Gutkin
  • Gideon Dror
  • Igor Ulitsky
  • Yonit Halperin
  • Ofir Davidovich
  • Daniela Raijman
  • Chaim Linhart
  • Ofer Lavi
  • Guy Karlebach
  • Firas Swidan
  • Panos Giannopoulos
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تاریخ انتشار 2008