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Model-Agnostic Counterfactual Reasoning for Eliminating Popularity Bias in Recommender System

Tianxin Wei, Fuli Feng, Jiawei Chen, Ziwei Wu, Jinfeng Yi, Xiangnan He

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Abstract

The general aim of the recommender system is to provide personalized suggestions to users, which is opposed to suggesting popular items. However, the normal training paradigm, i.e., fitting a recommender model to recover the user behavior data with pointwise or pairwise loss, makes the model biased towards popular items. This results in the terrible Matthew effect, making popular items be more frequently recommended and become even more popular. Existing work addresses this issue with Inverse Propensity Weighting (IPW), which decreases the impact of popular items on the training and increases the impact of long-tail items. Although theoretically sound, IPW methods are highly sensitive to the weighting strategy, which is notoriously difficult to tune.

Topics & Concepts

Counterfactual thinkingRecommender systemComputer sciencePointwisePairwise comparisonPopularityWeightingArtificial intelligenceCollaborative filteringMachine learningInformation retrievalTraining setData miningRegretReal world dataSynthetic dataMatching (statistics)Work (physics)PremiseBenchmarkingRecommender Systems and TechniquesAdvanced Graph Neural NetworksTopic Modeling