Evolutionary Grammar Induction for Protein Relation Extraction

نویسندگان

  • Dimitris Gavrilis
  • Ioannis Tsoulos
  • Evangelos Dermatas
چکیده

A novel method is presented for protein relation extraction from scientific abstracts. The proposed method is based on Meta-Grammars, a novel method for grammar inference that uses genetic programming and a BNF description to discover a tree representation of sentence structure that can be used for information extraction. A series if transformations are applied to the original corpus before the Meta-Grammars genetic algorithm is applied. The proposed method is evaluated against extracting protein relations from scientific abstracts and it is shown that it requires a train corpus which has minimum requirements from field experts and giving precision of 79.165%.

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تاریخ انتشار 2005