Feature selection in high dimensional regression problems for genomics

نویسندگان

  • Julie Hamon
  • Clarisse Dhaenens
  • Julien Jacques
چکیده

In the context of genomic selection in animal breeding, an important objective consists in looking for explicative markers for a phenotype under study. In order to deal with a high number of markers, we propose to use combinatorial optimization to perform variable selection. Results show that our approach outperforms some classical and widely used methods on simulated and “closed to real” datasets.

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تاریخ انتشار 2013