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Modeling Textual Cohesion for Event Extraction

机译:为事件提取建模文本衔接

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摘要

Event extraction systems typically locate the role fillers for an event by analyzing sentences in isolation and identifying each role filler independently of the others. We argue that more accurate event extraction requires a view of the larger context to decide whether an entity is related to a relevant event. We propose a bottom-up approach to event extraction that initially identifies candidate role fillers independently and then uses that information as well as discourse properties to model textual cohesion. The novel component of the architecture is a sequentially structured sentence classifier that identifies event-related story contexts. The sentence classifier uses lexical associations and discourse relations across sentences, as well as domain-specific distributions of candidate role fillers within and across sentences. This approach yields state-of-the-art performance on the MUC-4 data set, achieving substantially higher precision than previous systems.
机译:事件提取系统通常通过孤立地分析句子并独立于每个角色填充物来确定事件的角色填充物。我们认为,更准确的事件提取需要查看更大的上下文,以决定实体是否与相关事件相关。我们提出了一种自下而上的事件提取方法,该方法首先独立地识别候选角色填充者,然后使用该信息以及话语属性来建模文本衔接。该体系结构的新颖组成部分是顺序结构的句子分类器,用于识别与事件相关的故事上下文。句子分类器使用句子之间的词法关联和语篇关系,以及句子内和句子间候选角色填充词的特定领域分布。这种方法可在MUC-4数据集上产生最先进的性能,比以前的系统具有更高的精度。

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