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PASBio: predicate-argument structures for event extraction in molecular biology

机译:PASBio:用于分子生物学中事件提取的谓词参数结构

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摘要

BackgroundThe exploitation of information extraction (IE), a technology aiming to provide instances of structured representations from free-form text, has been rapidly growing within the molecular biology (MB) research community to keep track of the latest results reported in literature. IE systems have traditionally used shallow syntactic patterns for matching facts in sentences but such approaches appear inadequate to achieve high accuracy in MB event extraction due to complex sentence structure. A consensus in the IE community is emerging on the necessity for exploiting deeper knowledge structures such as through the relations between a verb and its arguments shown by predicate-argument structure (PAS). PAS is of interest as structures typically correspond to events of interest and their participating entities. For this to be realized within IE a key knowledge component is the definition of PAS frames. PAS frames for non-technical domains such as newswire are already being constructed in several projects such as PropBank, VerbNet, and FrameNet. Knowledge from PAS should enable more accurate applications in several areas where sentence understanding is required like machine translation and text summarization. In this article, we explore the need to adapt PAS for the MB domain and specify PAS frames to support IE, as well as outlining the major issues that require consideration in their construction.
机译:背景技术信息提取(IE)的开发旨在在自由形式的文本中提供结构化表示的实例,该技术在分子生物学(MB)研究社区中迅速发展,以跟踪文献中报道的最新结果。 IE系统传统上使用浅句法模式来匹配句子中的事实,但是由于复杂的句子结构,此类方法似乎不足以实现MB事件提取中的高精度。在IE社区中,关于利用更深层次的知识结构(例如通过谓词-自变量结构(PAS)表示的动词及其自变量之间的关系)的必要性正在形成共识。 PAS非常重要,因为结构通常对应于感兴趣的事件及其参与实体。为了在IE中实现这一点,关键的知识部分是PAS帧的定义。用于非技术领域(例如新闻专线)的PAS框架已经在PropBank,VerbNet和FrameNet等多个项目中构建。来自PAS的知识应在需要句子理解的多个领域(例如机器翻译和文本摘要)中实现更准确的应用。在本文中,我们探讨了针对MB域调整PAS的需求,并指定了支持IE的PAS框架,并概述了在构建它们时需要考虑的主要问题。

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