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Knowledge-Enriched Event Causality Identification via Latent Structure Induction Networks

机译:通过潜在结构感应网络的知识富集的事件因果关系识别

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Identifying causal relations of events is an important task in natural language processing area. However, the task is very challenging, because event causality is usually expressed in diverse forms that often lack explicit causal clues. Existing methods cannot handle well the problem, especially in the condition of lacking training data. Nonetheless, humans can make a correct judgement based on their background knowledge, including descriptive knowledge and relational knowledge. Inspired by it, we propose a novel Latent Structure Induction Network (LS1N) to incorporate the external structural knowledge into this task. Specifically, to make use of the descriptive knowledge, we devise a Descriptive Graph Induction module to obtain and encode the graph-structured descriptive knowledge. To leverage the relational knowledge, we propose a Relational Graph Induction module which is able to automatically learn a reasoning structure for event causality reasoning. Experimental results on two widely used datasets indicate that our approach significantly outperforms previous state-of-the-art methods.
机译:识别事件的因果关系是自然语言处理区域中的重要任务。然而,任务非常具有挑战性,因为事件因果关系通常以不同的形式表达,通常缺乏明确的因果线索。现有方法无法处理问题,特别是在缺乏培训数据的条件下。尽管如此,人类可以根据他们的背景知识做出正确的判断,包括描述性知识和关系知识。灵感来自于,我们提出了一种新颖的潜在结构感应网络(LS1N),将外部结构知识纳入此任务。具体而言,为了利用描述性知识,我们设计了描述性图形感应模块以获得和编码图形结构的描述性知识。为了利用关系知识,我们提出了一个关系图感应模块,该模块能够自动学习事件因果关系推理的推理结构。两个广泛使用的数据集上的实验结果表明我们的方法显着优于先前的最先进的方法。

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