Fairness metrics and bias mitigation strategies for rating predictions

作者:

Highlights:

摘要

Algorithm fairness is an established line of research in the machine learning domain with substantial work while the equivalent in the recommender system domain is relatively new. In this article, we consider rating-based recommender systems which model the recommendation process as a prediction problem. We consider different types of biases that can occur in this setting, discuss various fairness definitions, and also propose a novel bias mitigation strategy to address potential unfairness in a rating-based recommender system. Based on an analysis of fairness metrics used in machine learning and a discussion of their applicability in the recommender system domain, we map the proposed metrics from the two domains and identify commonly used concepts and definitions of fairness. Finally, to address unfairness and potential bias against certain groups in a recommender system, we develop a bias mitigation algorithm and conduct case studies on one synthetic and one empirical dataset to show its effectiveness. Our results show that unfairness can be significantly lowered through our approach and that bias mitigation is a fruitful area of research for recommender systems.

论文关键词:Recommender systems,Fairness metrics,Bias mitigation,Algorithmic fairness

论文评审过程:Received 1 December 2020, Revised 2 April 2021, Accepted 19 May 2021, Available online 12 June 2021, Version of Record 12 June 2021.

论文官网地址:https://doi.org/10.1016/j.ipm.2021.102646