Toward Explainable Dialogue System Using Two-stage Response Generation

Author:

Li Shaobo1ORCID,Sun Chengjie1ORCID,Xu Zhen2ORCID,Tiwari Prayag3ORCID,Liu Bingquan1ORCID,Gupta Deepak4ORCID,Shankar K.5ORCID,Ji Zhenzhou1ORCID,Wang Mingjiang1ORCID

Affiliation:

1. Harbin Institute of Technology, Harbin, P.R. China

2. Platform & Content Group, Tencent, P.R. China

3. Department of Computer Science, Aalto University, Finland

4. Maharaja Agrasen Institute of Technology, Delhi, India

5. Federal University of Piauí, Teresina, Brazil

Abstract

In recent years, neural networks have achieved impressive performance on dialogue response generation. However, most of these models still suffer from some shortcomings, such as yielding uninformative responses and lacking explainable ability. This article proposes a Two-stage Dialogue Response Generation model (TSRG), which specifies a method to generate diverse and informative responses based on an interpretable procedure between stages. TSRG involves a two-stage framework that generates a candidate response first and then instantiates it as the final response. The positional information and a resident token are injected into the candidate response to stabilize the multi-stage framework, alleviating the shortcomings in the multi-stage framework. Additionally, TSRG allows adjusting and interpreting the interaction pattern between the two generation stages, making the generation response somewhat explainable and controllable. We evaluate the proposed model on three dialogue datasets that contain millions of single-turn message-response pairs between web users. The results show that, compared with the previous multi-stage dialogue generation models, TSRG can produce more diverse and informative responses and maintain fluency and relevance.

Funder

National Key R&D Program of China

Academy of Finland

Business Finland

EU H2020

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference52 articles.

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4. Hierarchical Variational Memory Network for Dialogue Generation

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