Author:
Zhang Li,Zhang Yiwen,Cao Xiaolan,Liu Shuying
Abstract
AbstractConversational recommender systems (CRS) enable traditional recommender systems to interact with users by asking questions about their preferences and recommending items. Conversation recommendation has made significant progress, however, studies on attribute-aware conversational recommendation have overlooked the problem that after obtaining the candidate attribute set, the relevance of the attributes in the candidate attribute set to the user’s current preferred attributes is not further considered, resulting in the existence of many user-uninterested attributes in the candidate attribute set. This seriously affects the dialogue quality and reduces the user’s patience, decreasing recommendation accuracy. To address this problem, this paper proposes a new framework called Attribute Clipping based on Dynamic Graph (ACDG). In ACDG, firstly, the reasoning module uses the restriction property of graph structure to obtain a large set of candidate attributes, and then the attribute clipping module filters out the attributes with high relevance to the current user’s preferred attributes. Thus, ACDG can obtain a better-quality set of candidate attributes. Through extensive experiments on four benchmark CRS datasets, we validate the effectiveness of the method.
Funder
Natural Science Foundation of Anhui Provincial Education Department
Publisher
Springer Science and Business Media LLC
Reference31 articles.
1. Sun Y, Zhang Y. Conversational recommender system. In The 41st international acm sigir conference on research and development in information retrieval, 2018; pp. 235–244.
2. Lei W, He X, Miao Y, Wu Q, Hong R, Kan MY, Chua TS. Estimation-action-reflection: Towards deep interaction between conversational and recommender systems. In Proceedings of the 13th international conference on web search and data mining, 2020; pp. 304–312.
3. Gao C, Lei W, He X, de Rijke M, Chua TS. Advances and challenges in conversational recommender systems: a survey. AI Open. 2021;2:100–26.
4. Jannach D, Manzoor A, Cai W, Chen L. A survey on conversational recommender systems. ACM Comput Surv. 2021;54(5):1–36.
5. Pazzani MJ, Billsus D. Content-based recommendation systems. In: Pazzani MJ, editor. The adaptive web: methods and strategies of web personalization. Berlin, Heidelberg: Springer; 2007.