Cascading graph contrastive learning for multi-behavior recommendation

被引:0
|
作者
Yang, Jiangquan [1 ]
Li, Xiangxia [1 ]
Li, Bin [2 ]
Tian, Lianfang [2 ]
Xu, Bo [1 ]
Chen, Yanhong [1 ]
机构
[1] Guangdong Univ Finance & Econ, Sch Informat Sci, GuangZhou 510320, GuangDong, Peoples R China
[2] South China Univ Technol, Sch Automat Sci & Engn, GuangZhou 510641, GuangDong, Peoples R China
关键词
Collaborative filtering; Multi-behavior recommendation; Contrastive learning; GCN;
D O I
10.1016/j.neucom.2024.128618
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Traditional recommendation techniques often prioritize target behavior in practical recommendation scenarios(e.g., follow, play and buy). However, these approaches suffer from data sparsity issues and may not fully capture user's personal preferences. To address this deficiency, multi-behavior recommendation technology has emerged, leveraging users' multi-behavioral interactions for recommendation. Nevertheless, certain multi- behavior recommendation methods learning behavioral information from each behavior separately and then aggregate them before making recommendation, which inadvertently neglects the intrinsic connections between different behaviors. In some scenarios, user behavior often occurs in a fixed order, such as view-> > cart-> > buy in e-commerce platforms. In this work, we propose a novel C ascading G raph C onstrastive L earning (CGCL) framework for Multi-Behavior recommendation. Specifically, we devise a graph contrastive learning block to learn distinctive user behavioral representations for each type of interaction. Leveraging the recommendation task, we aim to capture user preferences, while the contrastive learning provides supplementary supervisory signals to refine the user and item representation. By acknowledging the sequential order of behaviors, we utilize the cascading structure within our model to iteratively propagate and purify the personalized preferences of users. Extensive experimental results and ablation studies on three real-world datasets have shown that our CGCL framework outperforms various state-of-the-art recommendation methods and validated the effectiveness of our approach.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Cascading Graph Convolution Contrastive Learning Networks for Multi-behavior Recommendation
    Liu, Nan
    Meng, Shunmei
    Jiang, Yu
    Li, Qianmu
    Xu, Xiaolong
    Qi, Lianyong
    Zhang, Xuyun
    DATABASE SYSTEMS FOR ADVANCED APPLICATIONS, PT VI, DASFAA 2024, 2024, 14855 : 3 - 18
  • [2] Multi-behavior contrastive learning with graph neural networks for recommendation
    Zhao, Zihan
    Tong, Xiangrong
    Wang, Yingjie
    Zhang, Qiang
    KNOWLEDGE-BASED SYSTEMS, 2024, 300
  • [3] Contrastive Clustering Learning for Multi-Behavior Recommendation
    Lan, Wei
    Zhou, Guoxian
    Chen, Qingfeng
    Wang, Wenguang
    Pan, Shirui
    Pan, Yi
    Zhang, Shichao
    ACM TRANSACTIONS ON INFORMATION SYSTEMS, 2025, 43 (01)
  • [4] Cascading Residual Graph Convolutional Network for Multi-Behavior Recommendation
    Yan, Mingshi
    Cheng, Zhiyong
    Gao, Chen
    Sun, Jing
    Liu, Fan
    Sun, Fuming
    Li, Haojie
    ACM TRANSACTIONS ON INFORMATION SYSTEMS, 2024, 42 (01)
  • [5] Multi-view multi-behavior interest learning network and contrastive learning for multi-behavior recommendation
    Su, Jieyang
    Chen, Yuzhong
    Lin, Xiuqiang
    Zhong, Jiayuan
    Dong, Chen
    KNOWLEDGE-BASED SYSTEMS, 2024, 305
  • [6] Multi-behavior collaborative contrastive learning for sequential recommendation
    Chen, Yuzhe
    Cao, Qiong
    Huang, Xianying
    Zou, Shihao
    COMPLEX & INTELLIGENT SYSTEMS, 2024, 10 (04) : 5033 - 5048
  • [7] Co-contrastive Learning for Multi-behavior Recommendation
    Li, Qingfeng
    Ma, Huifang
    Zhang, Ruoyi
    Jin, Wangyu
    Li, Zhixin
    PRICAI 2022: TRENDS IN ARTIFICIAL INTELLIGENCE, PT III, 2022, 13631 : 32 - 45
  • [8] Multi-view Multi-behavior Contrastive Learning in Recommendation
    Wu, Yiqing
    Xie, Ruobing
    Zhu, Yongchun
    Ao, Xiang
    Chen, Xin
    Zhang, Xu
    Zhuang, Fuzhen
    Lin, Leyu
    He, Qing
    DATABASE SYSTEMS FOR ADVANCED APPLICATIONS, DASFAA 2022, PT II, 2022, : 166 - 182
  • [9] Dual-scale Contrastive Learning for multi-behavior recommendation
    Li, Qingfeng
    Ma, Huifang
    Zhang, Ruoyi
    Jin, Wangyu
    Li, Zhixin
    APPLIED SOFT COMPUTING, 2023, 144
  • [10] Adaptive Augmentation and Neighbor Contrastive Learning for Multi-Behavior Recommendation
    Wu, Xia
    Wang, Shaoqing
    Zhang, Yao
    WEB AND BIG DATA, APWEB-WAIM 2024, PT II, 2024, 14962 : 18 - 32