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GPRec: Bi-level User Modeling for Deep Recommenders

28 October 2024
Yejing Wang
Dong Xu
Xiangyu Zhao
Zhiren Mao
Peng Xiang
Ling Yan
Yao Hu
Zijian Zhang
Xuetao Wei
Qiang Liu
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Abstract

GPRec explicitly categorizes users into groups in a learnable manner and aligns them with corresponding group embeddings. We design the dual group embedding space to offer a diverse perspective on group preferences by contrasting positive and negative patterns. On the individual level, GPRec identifies personal preferences from ID-like features and refines the obtained individual representations to be independent of group ones, thereby providing a robust complement to the group-level modeling. We also present various strategies for the flexible integration of GPRec into various DRS models. Rigorous testing of GPRec on three public datasets has demonstrated significant improvements in recommendation quality.

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