Exploring Dense Retrieval for Dialogue Response Selection

Author:

Lan Tian1ORCID,Cai Deng2ORCID,Wang Yan3ORCID,Su Yixuan4ORCID,Huang Heyan1ORCID,Mao Xian-Ling1ORCID

Affiliation:

1. Beijing Institute of Technology, China

2. The Chinese University of Hong Kong, Hong Kong, China

3. Independent Researcher, China

4. Language Technology Lab, University of Cambridge, England

Abstract

Recent progress in deep learning has continuously improved the accuracy of dialogue response selection. However, in real-world scenarios, the high computation cost forces existing dialogue response selection models to rank only a small number of candidates, recalled by a coarse-grained model, precluding many high-quality candidates. To overcome this problem, we present a novel and efficient response selection model and a set of tailor-designed learning strategies to train it effectively. The proposed model consists of a dense retrieval module and an interaction layer, which could directly select the proper response from a large corpus. We conduct re-rank and full-rank evaluations on widely used benchmarks to evaluate our proposed model. Extensive experimental results demonstrate that our proposed model notably outperforms the state-of-the-art baselines on both re-rank and full-rank evaluations. Moreover, human evaluation results show that the response quality could be improved further by enlarging the candidate pool with nonparallel corpora. In addition, we also release high-quality benchmarks that are carefully annotated for more accurate dialogue response selection evaluation. All source codes, datasets, model parameters, and other related resources have been publicly available. 1

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

Reference68 articles.

1. Towards a human-like open-domain chatbot;Adiwardana D.;ArXiv,2020

2. Siqi Bao, H. He, Fan Wang, and Hua Wu. 2020. PLATO: Pre-trained dialogue generation model with discrete latent variable. In ACL.

3. Sequential Matching Model for End-to-end Multi-turn Response Selection

4. Wei Chen, Yeyun Gong, Can Xu, Huang Hu, Bolun Yao, Zhongyu Wei, Zhihao Fan, Xiao-Mei Hu, Bartuer Zhou, Biao Cheng, Daxin Jiang, and Nan Duan. 2022. Contextual fine-to-coarse distillation for coarse-grained response selection in open-domain conversations. In ACL.

5. David R. Cheriton. 2019. From doc2query to docTTTTTquery.

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