Uncertainty sampling-based active learning for protein–protein interaction extraction from biomedical literature

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摘要

Protein–protein interaction (PPI) extraction from biomedical literature has become a research focus with the rapid growth of the number of biomedical literature. Many methods have been proposed for PPI extraction including natural language processing techniques and machine learning approaches. One problem of applying machine learning approaches to PPI extraction is that large amounts of data are available but the cost of correctly labeling it prohibits its use. To reduce the amount of human labeling effort while maintaining the PPI extraction performance, the paper presents an uncertainty sampling-based method of active learning (USAL) in a lexical feature-based SVM model to tag the most informative unlabeled samples. In addition, some specific samples are ignored to speed up learning process while maintaining desired accuracy. The experiment results on AIMED and CB corpora show that our method can reduce the labeling by 40% and 20%, respectively, without degrading the performance.

论文关键词:Active learning,Uncertainty sampling,Protein–protein interaction extraction

论文评审过程:Available online 31 January 2009.

论文官网地址:https://doi.org/10.1016/j.eswa.2009.01.043