基于上下文词扩展和神经网络的推文事件因果关系检测

Humayun Kayesh, Md. Saiful Islam, Junhu Wang
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引用次数: 10

摘要

Twitter已经成为用户生成事件信息的重要来源。人们经常在推特上报告事件之间的因果关系。这些事件因果信息的自动检测可能在规定性事件分析中发挥重要作用。现有的方法包括基于规则的和数据驱动的监督方法。然而,由于社交媒体短文本(如tweet)的非结构化和语法不正确,使用语言规则准确识别事件因果关系是具有挑战性的。此外,由于上下文信息不足,很难开发数据驱动的监督方法来检测推文中的事件因果关系。提出了一种基于背景知识的事件语境词引申技术。为了证明我们的事件上下文词扩展技术的有效性,我们开发了一种基于前馈神经网络的方法来检测推文中的事件因果关系。大量的实验证明了我们方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event Causality Detection in Tweets by Context Word Extension and Neural Networks
Twitter has become a great source of user-generated information about events. Very often people report causal relationships between events in their tweets. Automatic detection of causality information in these events might play an important role in prescriptive event analytics. Existing approaches include both rule-based and data-driven supervised methods. However, it is challenging to identify event causality accurately using linguistic rules due to the unstructured nature and grammatical incorrectness of social media short text such as tweets. Also, it is difficult to develop a data-driven supervised method for event causality detection in tweets due to insufficient contextual information. This paper proposes a novel event context word extension technique based on background knowledge. To demonstrate the effectiveness of our event context word extension technique, we develop a feed-forward neural network based approach to detect event causality from tweets. Extensive experiments demonstrate the superiority of our approach.
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