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General Debiasing for Graph-based Collaborative Filtering via Adversarial Graph Dropout

An Zhang, Wenchang Ma, Pengbo Wei, Leheng Sheng, Xiang Wang

202411 citationsDOIOpen Access PDF

Abstract

Graph neural networks (GNNs) have shown impressive performance in recommender systems, particularly in collaborative filtering (CF). The key lies in aggregating neighborhood information on a user-item interaction graph to enhance user/item representations. However, we have discovered that this aggregation mechanism comes with a drawback - it amplifies biases present in the interaction graph. For instance, a user's interactions with items can be driven by both unbiased true interest and various biased factors like item popularity or exposure. However, the current aggregation approach combines all information, both biased and unbiased, leading to biased representation learning. Consequently, graph-based recommenders can learn distorted views of users/items, hindering the modeling of their true preferences and generalizations.

Topics & Concepts

DebiasingComputer scienceAdversarial systemGraphDropout (neural networks)Theoretical computer scienceArtificial intelligenceMachine learningPsychologyCognitive scienceRecommender Systems and TechniquesMobile Crowdsensing and CrowdsourcingAdvanced Graph Neural Networks