Modeling Hierarchical Reasoning Chains by Linking Discourse Units and Key Phrases for Reading Comprehension

P. Hitzler, Shafiq R. Joty
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引用次数: 2

Abstract

Machine reading comprehension (MRC) poses new challenges to logical reasoning, which aims to understand the implicit logical relations entailed in the given contexts and perform inference over them. Due to the complexity of logic, logical connections exist at different granularity levels. However, most existing methods of logical reasoning individually focus on either entity-aware or discourse-based information but ignore the hierarchical relations that may even have mutual effects. This paper proposes a holistic graph network (HGN) that deals with context at both discourse-level and word-level as the basis for logical reasoning to provide a more fine-grained relation extraction. Specifically, node-level and type-level relations, which can be interpreted as bridges in the reasoning process, are modeled by a hierarchical interaction mechanism to improve the interpretation of MRC systems. Experimental results on logical reasoning QA datasets (ReClor and LogiQA) and natural language inference datasets (SNLI and ANLI) show the effectiveness and generalization of our method, and in-depth analysis verifies its capability to understand complex logical relations.
链接语篇单元和关键短语构建层次推理链
机器阅读理解(MRC)对逻辑推理提出了新的挑战,其目的是理解给定上下文中隐含的逻辑关系并对其进行推理。由于逻辑的复杂性,逻辑连接存在于不同的粒度级别。然而,大多数现有的逻辑推理方法要么单独关注实体感知的信息,要么关注基于话语的信息,但忽视了甚至可能具有相互作用的层次关系。本文提出了一个整体图网络(HGN),它在话语级和词级处理上下文,作为逻辑推理的基础,以提供更细粒度的关系提取。具体而言,节点级和类型级关系可以解释为推理过程中的桥梁,通过分层交互机制建模,以提高对MRC系统的解释。在逻辑推理QA数据集(ReClor和LogiQA)和自然语言推理数据集(SNLI和ANLI)上的实验结果表明了该方法的有效性和泛化性,并通过深入分析验证了其理解复杂逻辑关系的能力。
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