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A Multi-level Neural Network for Implicit Causality Detection in Web Texts

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arxiv 1908.07822 v4 pith:JNAJCMAS submitted 2019-08-18 cs.CL cs.AIcs.LG

A Multi-level Neural Network for Implicit Causality Detection in Web Texts

classification cs.CL cs.AIcs.LG
keywords causalitydetectionmodelcausalfeatureknowledgelevelmcdn
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Mining causality from text is a complex and crucial natural language understanding task corresponding to the human cognition. Existing studies at its solution can be grouped into two primary categories: feature engineering based and neural model based methods. In this paper, we find that the former has incomplete coverage and inherent errors but provide prior knowledge; while the latter leverages context information but causal inference of which is insufficiency. To handle the limitations, we propose a novel causality detection model named MCDN to explicitly model causal reasoning process, and furthermore, to exploit the advantages of both methods. Specifically, we adopt multi-head self-attention to acquire semantic feature at word level and develop the SCRN to infer causality at segment level. To the best of our knowledge, with regards to the causality tasks, this is the first time that the Relation Network is applied. The experimental results show that: 1) the proposed approach performs prominent performance on causality detection; 2) further analysis manifests the effectiveness and robustness of MCDN.

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