Path-Specific Counterfactual Fairness for Recommender Systems
Yaochen Zhu, Jing Ma, Liang Wu, Qi Guo, Liangjie Hong, Jundong Li

TL;DR
This paper introduces a path-specific fairness approach for recommender systems that balances mitigating bias with preserving recommendation diversity by using counterfactual inference and variational methods.
Contribution
It proposes a novel path-specific fairness framework (PSF-RS) that distinguishes fair and unfair influences of sensitive features via counterfactual inference, improving fairness without sacrificing recommendation quality.
Findings
Effective bias mitigation demonstrated on real datasets
Preserves recommendation diversity while reducing unfairness
Outperforms existing fair recommender methods
Abstract
Recommender systems (RSs) have become an indispensable part of online platforms. With the growing concerns of algorithmic fairness, RSs are not only expected to deliver high-quality personalized content, but are also demanded not to discriminate against users based on their demographic information. However, existing RSs could capture undesirable correlations between sensitive features and observed user behaviors, leading to biased recommendations. Most fair RSs tackle this problem by completely blocking the influences of sensitive features on recommendations. But since sensitive features may also affect user interests in a fair manner (e.g., race on culture-based preferences), indiscriminately eliminating all the influences of sensitive features inevitably degenerate the recommendations quality and necessary diversities. To address this challenge, we propose a path-specific fair RS…
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Taxonomy
TopicsRecommender Systems and Techniques
