Random forests for genomic data analysis.

@article{Chen2012RandomFF,
  title={Random forests for genomic data analysis.},
  author={Xi Chen and Hemant Ishwaran},
  journal={Genomics},
  year={2012},
  volume={99 6},
  pages={323-9}
}
Random forests (RF) is a popular tree-based ensemble machine learning tool that is highly data adaptive, applies to "large p, small n" problems, and is able to account for correlation as well as interactions among features. This makes RF particularly appealing for high-dimensional genomic data analysis. In this article, we systematically review the applications and recent progresses of RF for genomic data, including prediction and classification, variable selection, pathway analysis, genetic… CONTINUE READING
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