Adaptive Popularity Debiasing Aggregator for Graph Collaborative Filtering
Huachi Zhou, Hao Chen, Junnan Dong, Daochen Zha, C. E. Zhou, Xiao Huang
Abstract
The graph neural network-based collaborative filtering (CF) models user-item interactions as a bipartite graph and performs iterative aggregation to enhance performance. Unfortunately, the aggregation process may amplify the popularity bias, which impedes user engagement with niche (unpopular) items. While some efforts have studied the popularity bias in CF, they often focus on modifying loss functions, which can not fully address the popularity bias in GNN-based CF models. This is because the debiasing loss can be falsely backpropagated to non-target nodes during the backward pass of the aggregation.
Topics & Concepts
PopularityDebiasingComputer scienceBipartite graphGraphFocus (optics)Collaborative filteringTheoretical computer scienceRecommender systemInformation retrievalPsychologyPhysicsSocial psychologyOpticsCognitive scienceRecommender Systems and TechniquesAdvanced Graph Neural NetworksHuman Mobility and Location-Based Analysis