Uncertainty Quantification for Fairness in Two-Stage Recommender Systems
Lequn Wang, Thorsten Joachims

TL;DR
This paper introduces uncertainty-based threshold policies to improve fairness in two-stage recommender systems, ensuring fair candidate selection and relevance coverage despite biased data.
Contribution
It proposes distribution-free, finite-sample guarantees for fair candidate selection in two-stage recommenders using uncertainty quantification methods.
Findings
The proposed rules effectively select relevant items from each group.
They provide theoretical guarantees on fairness and relevance coverage.
Empirical results show consistent performance across various settings.
Abstract
Many large-scale recommender systems consist of two stages. The first stage efficiently screens the complete pool of items for a small subset of promising candidates, from which the second-stage model curates the final recommendations. In this paper, we investigate how to ensure group fairness to the items in this two-stage architecture. In particular, we find that existing first-stage recommenders might select an irrecoverably unfair set of candidates such that there is no hope for the second-stage recommender to deliver fair recommendations. To this end, motivated by recent advances in uncertainty quantification, we propose two threshold-policy selection rules that can provide distribution-free and finite-sample guarantees on fairness in first-stage recommenders. More concretely, given any relevance model of queries and items and a point-wise lower confidence bound on the expected…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Risk and Portfolio Optimization · Multi-Criteria Decision Making
