English

Multi-Grained Preference Enhanced Transformer for Multi-Behavior Sequential Recommendation

Information Retrieval 2024-12-31 v2 Social and Information Networks

Abstract

Sequential recommendation (SR) aims to predict the next purchasing item according to users' dynamic preference learned from their historical user-item interactions. To improve the performance of recommendation, learning dynamic heterogeneous cross-type behavior dependencies is indispensable for recommender system. However, there still exists some challenges in Multi-Behavior Sequential Recommendation (MBSR). On the one hand, existing methods only model heterogeneous multi-behavior dependencies at behavior-level or item-level, and modelling interaction-level dependencies is still a challenge. On the other hand, the dynamic multi-grained behavior-aware preference is hard to capture in interaction sequences, which reflects interaction-aware sequential pattern. To tackle these challenges, we propose a Multi-Grained Preference enhanced Transformer framework (M-GPT). First, M-GPT constructs a interaction-level graph of historical cross-typed interactions in a sequence. Then graph convolution is performed to derive interaction-level multi-behavior dependency representation repeatedly, in which the complex correlation between historical cross-typed interactions at specific orders can be well learned. Secondly, a novel multi-scale transformer architecture equipped with multi-grained user preference extraction is proposed to encode the interaction-aware sequential pattern enhanced by capturing temporal behavior-aware multi-grained preference . Experiments on the real-world datasets indicate that our method M-GPT consistently outperforms various state-of-the-art recommendation methods.

Keywords

Cite

@article{arxiv.2411.12179,
  title  = {Multi-Grained Preference Enhanced Transformer for Multi-Behavior Sequential Recommendation},
  author = {Chuan He and Yongchao Liu and Qiang Li and Weiqiang Wang and Xin Fu and Xinyi Fu and Chuntao Hong and Xinwei Yao},
  journal= {arXiv preprint arXiv:2411.12179},
  year   = {2024}
}

Comments

12 pages

R2 v1 2026-06-28T20:04:29.142Z