IRRGN: An Implicit Relational Reasoning Graph Network for Multi-turn Response Selection

Jing-Hui Deng, Hengwei Dai, Xuewei Guo, Yuanchen Ju, Wei Peng
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Abstract

The task of response selection in multi-turn dialogue is to find the best option from all candidates. In order to improve the reasoning ability of the model, previous studies pay more attention to using explicit algorithms to model the dependencies between utterances, which are deterministic, limited and inflexible. In addition, few studies consider differences between the options before and after reasoning. In this paper, we propose an Implicit Relational Reasoning Graph Network to address these issues, which consists of the Utterance Relational Reasoner (URR) and the Option Dual Comparator (ODC). URR aims to implicitly extract dependencies between utterances, as well as utterances and options, and make reasoning with relational graph convolutional networks. ODC focuses on perceiving the difference between the options through dual comparison, which can eliminate the interference of the noise options. Experimental results on two multi-turn dialogue reasoning benchmark datasets MuTual and MuTualplus show that our method significantly improves the baseline of four pre-trained language models and achieves state-of-the-art performance. The model surpasses human performance for the first time on the MuTual dataset.
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多回合响应选择的隐式关系推理图网络
在多回合对话中,回答选择的任务是从所有的候选者中找出最佳选择。为了提高模型的推理能力,以往的研究更注重使用显式算法对话语之间的依赖关系进行建模,而话语之间的依赖关系具有确定性、有限性和不灵活性。此外,很少有研究考虑推理前后选项之间的差异。在本文中,我们提出了一个隐式关系推理图网络来解决这些问题,它由话语关系推理器(URR)和选项双比较器(ODC)组成。URR旨在隐式提取话语之间的依赖关系,以及话语和选项之间的依赖关系,并使用关系图卷积网络进行推理。ODC侧重于通过双重比较感知选项之间的差异,可以消除噪声选项的干扰。在MuTual和MuTualplus两个多回合对话推理基准数据集上的实验结果表明,我们的方法显著提高了四种预训练语言模型的基线,达到了最先进的性能。该模型首次在MuTual数据集上超越了人类的表现。
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