Extracting Events and Their Relations from Texts: A Survey on Recent Research Progress and Challenges

Kang Liu , Yubo Chen , Jian Liu , Xinyu Zuo , Jun Zhao
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引用次数: 22

Abstract

Event is a common but non-negligible knowledge type. How to identify events from texts, extract their arguments, even analyze the relations between different events are important for many applications. This paper summaries some constructed event-centric knowledge graphs and the recent typical approaches for event and event relation extraction, besides task description, widely used evaluation datasets, and challenges. Specifically, in the event extraction task, we mainly focus on three recent important research problems: 1) how to learn the textual semantic representations for events in sentence-level event extraction; 2) how to extract relations across sentences or in a document level; 3) how to acquire or augment labeled instances for model training. In event relation extraction, we focus on the extraction approaches for three typical event relation types, including coreference, causal and temporal relations, respectively. Finally, we give out our conclusion and potential research issues in the future.

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从文本中提取事件及其关系:近期研究进展与挑战综述
事件是一种常见但不可忽略的知识类型。如何从文本中识别事件,提取事件的参数,甚至分析不同事件之间的关系,对于许多应用来说都很重要。本文总结了一些以事件为中心的知识图的构建,以及近年来事件和事件关系提取的典型方法,以及任务描述、广泛使用的评估数据集和面临的挑战。具体而言,在事件提取任务中,我们主要关注三个近期的重要研究问题:1)如何学习句子级事件提取中事件的文本语义表示;2)如何在句子或文档层面提取关系;3)如何获取或增加标记实例用于模型训练。在事件关系提取中,重点研究了三种典型事件关系类型的提取方法,分别是共参考关系、因果关系和时间关系。最后,给出了本文的结论和未来的研究方向。
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