Back to Search Start Over

Aligning Recommendation and Conversation via Dual Imitation

Authors :
Zhou, Jinfeng
Wang, Bo
Huang, Minlie
Zhao, Dongming
Huang, Kun
He, Ruifang
Hou, Yuexian
Publication Year :
2022

Abstract

Human conversations of recommendation naturally involve the shift of interests which can align the recommendation actions and conversation process to make accurate recommendations with rich explanations. However, existing conversational recommendation systems (CRS) ignore the advantage of user interest shift in connecting recommendation and conversation, which leads to an ineffective loose coupling structure of CRS. To address this issue, by modeling the recommendation actions as recommendation paths in a knowledge graph (KG), we propose DICR (Dual Imitation for Conversational Recommendation), which designs a dual imitation to explicitly align the recommendation paths and user interest shift paths in a recommendation module and a conversation module, respectively. By exchanging alignment signals, DICR achieves bidirectional promotion between recommendation and conversation modules and generates high-quality responses with accurate recommendations and coherent explanations. Experiments demonstrate that DICR outperforms the state-of-the-art models on recommendation and conversation performance with automatic, human, and novel explainability metrics.<br />Comment: EMNLP 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.02848
Document Type :
Working Paper