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Other-Anaphora Resolution in Biomedical Texts with Automatically Mined Patterns

机译:具有自动挖掘模式的生物医学文本中的其他照应度解析

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This paper proposes an other-anaphora resolution approach in bio-medical texts. It utilizes automatically mined patterns to discover the semantic relation between an anaphor and a candidate antecedent. The knowledge from lexical patterns is incorporated in a machine learning framework to perform anaphora resolution. The experiments show that machine learning approach combined with the auto-mined knowledge is effective for other-anaphora resolution in the biomedical domain. Our system with auto-mined patterns gives an accuracy of 56.5%., yielding 16.2% improvement against the baseline system without pattern features, and 9% improvement against the system using manually designed patterns.
机译:本文提出了一种生物医学文本中的其他回指解决方法。它利用自动挖掘的模式来发现照应词和候选先行词之间的语义关系。来自词汇模式的知识被并入机器学习框架中以执行回指解析。实验表明,机器学习方法与自动挖掘的知识相结合对于生物医学领域中的其他回指解析非常有效。我们的系统具有自动挖掘的模式,可提供56.5%的精度,与不具有模式功能的基准系统相比,可提高16.2%,与使用手动设计的模式的系统相比,可提高9%。

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