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Rating Distribution Calibration for Selection Bias Mitigation in Recommendations

Haochen Liu, Da Tang, Ji Yang, Xiangyu Zhao, Hui Liu, Jiliang Tang, Youlong Cheng

2022Proceedings of the ACM Web Conference 202229 citationsDOI

Abstract

Real-world recommendation datasets have been shown to be subject to selection bias, which can challenge recommendation models to learn real preferences of users, so as to make accurate recommendations. Existing approaches to mitigate selection bias, such as data imputation and inverse propensity score, are sensitive to the quality of the additional imputation or propensity estimation models. To break these limitations, in this work, we propose a novel self-supervised learning (SSL) framework, i.e., Rating Distribution Calibration (RDC), to tackle selection bias without introducing additional models. In addition to the original training objective, we introduce a rating distribution calibration loss. It aims to correct the predicted rating distribution of biased users by taking advantage of that of their similar unbiased users. We empirically evaluate RDC on two real-world datasets and one synthetic dataset. The experimental results show that RDC outperforms the original model as well as the state-of-the-art debiasing approaches by a significant margin.

Topics & Concepts

DebiasingComputer scienceImputation (statistics)Machine learningSelection biasArtificial intelligenceData miningCalibrationMargin (machine learning)Selection (genetic algorithm)Missing dataStatisticsMathematicsPsychologyCognitive scienceRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchPrivacy-Preserving Technologies in Data
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