Affiliation:
1. University of Posts and Telecommunications, Nanjing, China
Abstract
Graph Collaborative Filtering is a widely adopted approach for recommendation, which captures similar behavior features through Graph Neural Network (GNN). Recently, Contrastive Learning (CL) has been demonstrated as an effective method to enhance the performance of graph collaborative filtering. Typically, CL-based methods first perturb users’ history behavior data (e.g., drop clicked items), then construct a self-discriminating task for behavior representations under different random perturbations. However, for widely existing inactive users, random perturbation makes their sparse behavior information more incomplete, thereby harming the behavior feature extraction. To tackle the above issue, we design a novel directional perturbation-based CL method to improve the graph collaborative filtering performance. The idea is to perturb node representations through directionally enhancing behavior features. To do so, we propose a simple yet effective feedback mechanism, which fuses the representations of nodes based on behavior similarity. Then, to avoid irrelevant behavior preferences introduced by the feedback mechanism, we construct a behavior self-contrast task before and after feedback, to align the node representations between the final output and the first layer of GNN. Different from the widely adopted self-discriminating task, the behavior self-contrast task avoids complex message propagation on different perturbed graphs, which is more efficient than previous methods. Extensive experiments on three public datasets demonstrate that the proposed method has distinct advantages over other CL methods on recommendation accuracy.
Funder
Key Research and Development Program of Jiangsu Province
National Nature Science Foundation of China
Natural Science Foundation of Jiangsu Province
Postgraduate Research and Practice Innovation Program of Jiangsu Province
Publisher
Association for Computing Machinery (ACM)
Reference52 articles.
1. Video suggestion and discovery for youtube
2. Raja Muhammad Saad Bashir Talha Qaiser Shan E. Ahmed Raza and Nasir M. Rajpoot. 2023. Consistency regularisation in varying contexts and feature perturbations for semi-supervised semantic segmentation of histology images. arXiv:2301.13141.
3. Xuheng Cai, Chao Huang, Lianghao Xia, and Xubin Ren. 2023. Simple yet effective graph contrastive learning for recommendation. In Proceedings of the International Conference on Learning Representations. OpenReview.net
4. Measuring and Relieving the Over-Smoothing Problem for Graph Neural Networks from the Topological View
5. Deep Neural Networks for YouTube Recommendations