SHGCN: Socially Enhanced Heterogeneous Graph Convolutional Network for Multi-behavior Prediction

Author:

Zhang Lei1ORCID,Zhang Wuji1ORCID,Wu Likang2ORCID,He Ming3ORCID,Zhao Hongke4ORCID

Affiliation:

1. Information Materials and Intelligent Sensing Laboratory of Anhui Province, Department of Computer Science and Technology, Anhui University, China

2. University of Science and Technology of China, China

3. AI Lab, Lenovo Research; Department of Electronic Engineering, Shanghai Jiao Tong University, China

4. College of Management and Economics, Tianjin University; Laboratory of Computation and Analytics of Complex Management Systems (CACMS), Tianjin University, China

Abstract

In recent years, multi-behavior information has been utilized to address data sparsity and cold-start issues. The general multi-behavior models capture multiple behaviors of users to make the representation of relevant features more fine-grained and informative. However, most current multi-behavior recommendation methods neglect the exploration of social relations between users. Actually, users’ potential social connections are critical to assist them in filtering multifarious messages, which may be one key for models to tap deeper into users’ interests. Additionally, existing models usually focus on the positive behaviors (e.g., click , follow , and purchase ) of users and tend to ignore the value of negative behaviors (e.g., unfollow and badpost ). In this work, we present a Multi-Behavior Graph (MBG) construction method based on user behaviors and social relationships and then introduce a novel socially enhanced and behavior-aware graph neural network for behavior prediction. Specifically, we propose a Socially Enhanced Heterogeneous Graph Convolutional Network (SHGCN) model, which utilizes behavior heterogeneous graph convolution module and social graph convolution module to effectively incorporate behavior features and social information to achieve precise multi-behavior prediction. In addition, the aggregation pooling mechanism is suggested to integrate the outputs of different graph convolution layers, and a dynamic adaptive loss (DAL) method is presented to explore the weight of each behavior. The experimental results on the datasets of the e-commerce platforms (i.e., Epinions and Ciao) indicate the promising performance of SHGCN. Compared with the most powerful baseline, SHGCN achieves 3.3% and 1.4% uplift in terms of AUC on the Epinions and Ciao datasets. Further experiments, including model efficiency analysis, DAL mechanism, and ablation experiments, confirm the validity of the multi-behavior information and social enhancement.

Funder

National Natural Science Foundation of China

Key Projects of University Excellent Talents Support Plan of Anhui Provincial Department of Education

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

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