首页> 外文会议>Pacific Symposium on Biocomputing 2002, Jan 3-7, 2002, Kauai, Hawaii >Robust Relational Parsing over Biomedical Literature: Extracting Inhibit Relations
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Robust Relational Parsing over Biomedical Literature: Extracting Inhibit Relations

机译:生物医学文献的稳健关系解析:提取抑制关系

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We describe the design of a robust parser for identifying and extracting biomolec-ular relations from the biomedical literature. Separate automata over distinct syntactic domains were developed for extraction of nominal-based relational information versus verbal-based relations. This allowed us to optimize the grammars separately for each module, regardless of any specific relation resulting in significantly better performance. A unique feature of this system is the use of text-based anaphora resolution to enhance the results of argument binding in relational extraction. We demonstrate the performance of our system on inhibition-relations, and present our initial results measured against an annotated text used as a gold standard for evaluation purposes. The results represent a significant improvement over previously published results on extracting such relations from Medline: Precision was 90%, Recall 57%, and Partial Recall 22%. These results demonstrate the effectiveness of a corpus-based linguistic approach to information extraction over Medline.
机译:我们描述了用于从生物医学文献中识别和提取生物分子关系的健壮解析器的设计。开发了在不同句法域上的单独自动机,以提取基于名词的关系信息与基于言语的关系。这使我们可以为每个模块分别优化语法,而不管任何特定的关系如何,从而显着提高性能。该系统的独特功能是使用基于文本的回指解析来增强关系提取中参数绑定的结果。我们演示了我们的系统在抑制相关性方面的性能,并展示了我们的初步结果,该结果是根据注释文字(用作评估的黄金标准)测得的。结果表明,与以前发表的从Medline中提取此类关系的结果相比,该结果有了显着改进:“精确度”为90%,“召回率”为57%,“部分召回率”为22%。这些结果证明了基于语料库的语言方法在Medline上提取信息的有效性。

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