A semi-supervised learning framework for biomedical event extraction based on hidden topics

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ObjectivesScientists have devoted decades of efforts to understanding the interaction between proteins or RNA production. The information might empower the current knowledge on drug reactions or the development of certain diseases. Nevertheless, due to the lack of explicit structure, literature in life science, one of the most important sources of this information, prevents computer-based systems from accessing. Therefore, biomedical event extraction, automatically acquiring knowledge of molecular events in research articles, has attracted community-wide efforts recently. Most approaches are based on statistical models, requiring large-scale annotated corpora to precisely estimate models’ parameters. However, it is usually difficult to obtain in practice. Therefore, employing un-annotated data based on semi-supervised learning for biomedical event extraction is a feasible solution and attracts more interests.

论文关键词:Semi-supervised learning,Biomedical event extraction,Latent Dirichlet allocation,K nearest neighbor

论文评审过程:Received 21 July 2014, Revised 4 January 2015, Accepted 25 March 2015, Available online 1 April 2015, Version of Record 31 May 2015.

论文官网地址:https://doi.org/10.1016/j.artmed.2015.03.004