Multi-types of user behavior data (e.g., clicking, adding to cart, and purchasing) are recorded in most real-world recommendation scenarios, which can help to learn users' multi-faceted preferences. However, it is challenging to explore multi-behavior data due to the unbalanced data distribution and sparse target behavior, which lead to the inadequate modeling of high-order relations when treating multi-behavior data "as features"and gradient conflict in multi-task learning when treating multi-behavior data "as labels". In this paper, we propose CIGF, a Compressed Interaction Graph based Framework, to overcome the above limitations. Specifically, we design a novel Compressed Interaction Graph Convolution Network (CIGCN) to model instance-level high-order relations explicitly. To alleviate the potential gradient conflict when treating multi-behavior data "as labels", we propose a Multi-Expert with Separate Input (MESI) network with separate input on the top of CIGCN for multi-task learning. Comprehensive experiments on three large-scale real-world datasets demonstrate the superiority of CIGF.
CITATION STYLE
Guo, W., Meng, C., Yuan, E., He, Z., Guo, H., Zhang, Y., … Zhang, R. (2023). Compressed Interaction Graph based Framework for Multi-behavior Recommendation. In ACM Web Conference 2023 - Proceedings of the World Wide Web Conference, WWW 2023 (pp. 960–970). Association for Computing Machinery, Inc. https://doi.org/10.1145/3543507.3583312
Mendeley helps you to discover research relevant for your work.