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A linear classifier based on entity recognition tools and a statistical approach to method extraction in the protein-protein interaction literature

机译:蛋白质-蛋白质相互作用文献中基于实体识别工具的线性分类器和方法提取的统计方法

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摘要

BackgroundWe participated, as Team 81, in the Article Classification and the Interaction Method subtasks (ACT and IMT, respectively) of the Protein-Protein Interaction task of the BioCreative III Challenge. For the ACT, we pursued an extensive testing of available Named Entity Recognition and dictionary tools, and used the most promising ones to extend our Variable Trigonometric Threshold linear classifier. Our main goal was to exploit the power of available named entity recognition and dictionary tools to aid in the classification of documents relevant to Protein-Protein Interaction (PPI). For the IMT, we focused on obtaining evidence in support of the interaction methods used, rather than on tagging the document with the method identifiers. We experimented with a primarily statistical approach, as opposed to employing a deeper natural language processing strategy. In a nutshell, we exploited classifiers, simple pattern matching for potential PPI methods within sentences, and ranking of candidate matches using statistical considerations. Finally, we also studied the benefits of integrating the method extraction approach that we have used for the IMT into the ACT pipeline.
机译:背景我们以第81团队的身份参加了BioCreative III挑战赛的蛋白质分类和蛋白质相互作用研究任务的文章分类和相互作用方法子任务(分别为ACT和IMT)。对于ACT,我们对可用的命名实体识别和词典工具进行了广泛的测试,并使用最有前途的工具扩展了可变三角阈值线性分类器。我们的主要目标是利用可用的命名实体识别和词典工具的功能来帮助分类与蛋白质-蛋白质相互作用(PPI)相关的文档。对于IMT,我们专注于获取支持所使用的交互方法的证据,而不是使用方法标识符对文档进行标记。我们尝试了一种主要的统计方法,而不是采用更深层的自然语言处理策略。简而言之,我们利用分类器,句子中潜在PPI方法的简单模式匹配以及使用统计考虑因素对候选匹配进行排序。最后,我们还研究了将用于IMT的方法提取方法集成到ACT管道中的好处。

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