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An extended dependency graph for relation extraction in biomedical texts

机译:生物医学文献中关系提取的扩展依赖图

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摘要

Kernel-based methods are widely used for relation extraction task and obtain good results by leveraging lexical and syntactic information. However, in biomedical domain these methods are limited by the size of dataset and have difficulty in coping with variations in text. To address this problem, we propose Extended Dependency Graph (EDG) by incorporating a few simple linguistic ideas and include information beyond syntax. We believe the use of EDG will enable machine learning methods to generalize more easily. Experiments confirm that EDG provides up to 10% f-value improvement over dependency graph using mainstream kernel methods over five corpora. We conducted additional experiments to provide a more detailed analysis of the contributions of individual modules in EDG construction.
机译:基于核的方法被广泛用于关系提取任务,并利用词法和句法信息获得良好的结果。但是,在生物医学领域,这些方法受到数据集大小的限制,并且难以应对文本的变化。为了解决这个问题,我们提出了扩展相依关系图(EDG),方法是合并一些简单的语言思想,并包括语法以外的信息。我们相信EDG的使用将使机器学习方法更容易推广。实验证实,EDG使用5种语料库中的主流内核方法提供了比依赖图高10%的改进。我们进行了其他实验,以更详细地分析EDG建设中各个模块的作用。

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  • 会议地点 Beijing(CA)
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    Department of Computer Information Sciences University of Delaware Newark, DE 19716;

    Department of Computer Information Sciences University of Delaware Newark, DE 19716;

    Department of Computer Information Sciences University of Delaware Newark, DE 19716,Center for Bioinformatics and Computational Biology University of Delaware Newark, DE 19716;

    Department of Computer Information Sciences University of Delaware Newark, DE 19716;

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