Ensuring User-side Fairness in Dynamic Recommender Systems
Hyunsik Yoo, Zhichen Zeng, Jian Kang, Ruizhong Qiu, David Zhou, Zhining Liu, Fei Wang, Charlie Xu, Eunice Chan, and Hanghang Tong

TL;DR
This paper introduces FADE, a novel framework for maintaining user-side fairness in dynamic recommender systems through incremental fine-tuning and a new differentiable ranking metric, addressing challenges of distribution shifts and non-differentiability.
Contribution
It provides the first theoretical and practical approach for ensuring fairness in evolving recommender systems, including a new differentiable metric and an end-to-end fine-tuning method.
Findings
FADE reduces user performance disparities effectively.
FADE maintains recommendation quality with minimal sacrifice.
Differentiable Hit improves gradient flow and efficiency.
Abstract
User-side group fairness is crucial for modern recommender systems, aiming to alleviate performance disparities among user groups defined by sensitive attributes like gender, race, or age. In the ever-evolving landscape of user-item interactions, continual adaptation to newly collected data is crucial for recommender systems to stay aligned with the latest user preferences. However, we observe that such continual adaptation often exacerbates performance disparities. This necessitates a thorough investigation into user-side fairness in dynamic recommender systems, an area that has been unexplored in the literature. This problem is challenging due to distribution shifts, frequent model updates, and non-differentiability of ranking metrics. To our knowledge, this paper presents the first principled study on ensuring user-side fairness in dynamic recommender systems. We start with…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Recommender Systems and Techniques · Sharing Economy and Platforms
