IRRGN: An Implicit Relational Reasoning Graph Network for Multi-turn Response Selection
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, limite...
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Zusammenfassung: | 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 MuTual+ show that our method significantly improves the baseline of
four pretrained 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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DOI: | 10.48550/arxiv.2212.00482 |