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Using Cross-Entity Inference to Improve Event Extraction

机译:使用交叉实体推理来改善事件提取

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Event extraction is the task of detecting certain specified types of events that are mentioned in the source language data. The state-of-the-art research on the task is transductive inference (e.g. cross-event inference). In this paper, we propose a new method of event extraction by well using cross-entity inference. In contrast to previous inference methods, we regard entity-type consistency as key feature to predict event mentions. We adopt this inference method to improve the traditional sentence-level event extraction system. Experiments show that we can get 8.6% gain in trigger (event) identification, and more than 11.8% gain for argument (role) classification in ACE event extraction.
机译:事件提取是检测源语言数据中提到的某些指定类型的事件的任务。对任务的最先进的研究是转换推论(例如跨事件推理)。在本文中,我们使用跨实体推断提出了一种新的事件提取方法。与先前推理方法相比,我们将实体类型的一致性视为预测事件提到的关键特征。我们采用此推理方法来改善传统的句子级事件提取系统。实验表明,我们可以在触发(事件)识别中获得8.6%的增益,并且在ACE事件提取中的参数(角色)分类超过11.8%。

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