A Machine Learning Approach to Reducing the Work of Experts in Article Selection from Database:A Case Study for Regulatory Relations of <I>S. cerevisiae</I> Genes in MEDLINE
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概要
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We consider the problem of selecting the articles of experts' interest from a literature database with the assistance of a machine learning system. For this purpose, we propose the rough reading strategy which combines the experts' knowledge with the machine learning system. For the articles converted through the rough reading strategy, we employ the learning system BONSAI and apply it for discovering rules which may reduce the work of experts in selecting the articles. Furthermore, we devise an algorithm which iterates the above procedure until almost all records of experts' interest are selected. Experimental results by using the articles from <I>Cell</I> show that almost all records of experts' interest are selected while reducing the works of experts drastically.
- 日本バイオインフォマティクス学会の論文
日本バイオインフォマティクス学会 | 論文
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