Nowadays, 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 predictive event analytics. Existing approaches include both rule-based and data-driven supervised methods. However, it is challenging to correctly identify event causality using only linguistic rules due to the highly 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 proposed 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.
翻译:目前,Twitter已成为关于事件的用户生成信息的重要来源。人们常常在推特中报告事件之间的因果关系。在这些事件中自动发现因果关系信息可能会在预测事件分析中发挥重要作用。现有的方法包括基于规则的方法和由数据驱动的监管方法。然而,由于Twitter等社交媒体短文高度不结构化和语法错误,因此仅使用语言规则来正确识别事件因果关系具有挑战性。此外,由于背景信息不足,很难为在Twitter中发现事件因果关系制定由数据驱动的监督方法。本文提出了基于背景知识的新型事件背景文字扩展技术。为了展示我们拟议的事件背景文字扩展技术的有效性,我们开发了一个基于反馈的神经网络,以探测推文等事件因果关系。广泛的实验展示了我们方法的优势。