Back to Search Start Over

Group-Aware Interest Disentangled Dual-Training for Personalized Recommendation

Authors :
Liu, Xiaolong
Yang, Liangwei
Liu, Zhiwei
Li, Xiaohan
Yang, Mingdai
Wang, Chen
Yu, Philip S.
Publication Year :
2023

Abstract

Personalized recommender systems aim to predict users' preferences for items. It has become an indispensable part of online services. Online social platforms enable users to form groups based on their common interests. The users' group participation on social platforms reveals their interests and can be utilized as side information to mitigate the data sparsity and cold-start problem in recommender systems. Users join different groups out of different interests. In this paper, we generate group representation from the user's interests and propose IGRec (Interest-based Group enhanced Recommendation) to utilize the group information accurately. It consists of four modules. (1) Interest disentangler via self-gating that disentangles users' interests from their initial embedding representation. (2) Interest aggregator that generates the interest-based group representation by Gumbel-Softmax aggregation on the group members' interests. (3) Interest-based group aggregation that fuses user's representation with the participated group representation. (4) A dual-trained rating prediction module to utilize both user-item and group-item interactions. We conduct extensive experiments on three publicly available datasets. Results show IGRec can effectively alleviate the data sparsity problem and enhance the recommender system with interest-based group representation. Experiments on the group recommendation task further show the informativeness of interest-based group representation.<br />Comment: 10 pages, 7 figures, 2023 IEEE International Conference on Big Data

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.09577
Document Type :
Working Paper