Searching for Meaningful Feature Interactions with Backward-Chaining Rule Induction

نویسندگان

  • Douglas H. Fisher
  • Mary E. Edgerton
  • Lianhong Tang
  • Lewis J. Frey
  • Zhihua Chen
چکیده

Exploring the vast number of possible feature interactions in domains such as gene expression microarray data is an onerous task. We propose Backward-Chaining Rule Induction (BCRI) as a semi-supervised mechanism for biasing the search for plausible feature interactions. BCRI adds to a relatively limited tool-chest of hypothesis generation software, and it can be viewed as an alternative to purely unsupervised association rule learning. We illustrate BCRI by using it to search for gene-to-gene causal mechanisms. Mapping hypothesized gene interactions against a domain theory of prior knowledge offers support and explanations for hypothesized interactions, and suggests gaps in the current domain theory, which induction might help fill.

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تاریخ انتشار 2005