• 中国计算机学会会刊
  • 中国科技核心期刊
  • 中文核心期刊

Computer Engineering & Science ›› 2024, Vol. 46 ›› Issue (04): 707-715.

• Artificial Intelligence and Data Mining • Previous Articles     Next Articles

A dual-view contrastive learning-guided multi-behavior recommendation method

LI Qing-feng1,JIN Liu2,MA Hui-fang1,ZHANG Ruo-yi1   

  1. (1.College of Computer Science and Engineering,Northwest Normal University,Lanzhou 730070;
    2.China Transport Information Center Co.,Ltd.,Beijing 100088,China)
  • Received:2022-09-27 Revised:2023-03-23 Accepted:2024-04-25 Online:2024-04-25 Published:2024-04-18

Abstract: Multi-behavior recommendation (MBR) typically utilizes various types of user interaction behaviors (such as browsing, adding to cart, and purchasing) to learn user preferences for the target behavior (i.e., purchasing). Due to the impact of sparse supervision signals, existing MBR models often suffer from poor recommendation performance. Recently, contrastive learning has achieved success in mining auxiliary supervision signals from raw data itself. Inspired by this, we propose a dual-view con- trastive learning-guided method to enhance MBR. Firstly, we construct two views that can capture both local and high-order structural information using multi-behavior interaction data. Then, we design two different view encoders to learn user and item embeddings on these complementary views. Finally, we use cross-view collaborative contrastive learning to mutually supervise and learn better embeddings. Experimental results on two real-world datasets demonstrate that our proposed method significantly outperforms baseline methods.

Key words: collaborative filtering, contrastive learning, graph neural network, multi-behavior recommendation