Robust Reputation Independence in Ranking Systems for Multiple Sensitive Attributes
Guilherme Ramos, Ludovico Boratto, Mirko Marras

TL;DR
This paper introduces a method to ensure reputation independence across multiple sensitive attributes in ranking systems, reducing bias while maintaining system quality and robustness.
Contribution
It proposes a novel approach to achieve reputation independence for multiple sensitive attributes simultaneously, addressing limitations of prior single-attribute methods.
Findings
Reduces bias across multiple demographic attributes
Maintains ranking quality and robustness
Effective on real-world datasets
Abstract
Ranking systems have an unprecedented influence on how and what information people access, and their impact on our society is being analyzed from different perspectives, such as users' discrimination. A notable example is represented by reputation-based ranking systems, a class of systems that rely on users' reputation to generate a non-personalized item-ranking, proved to be biased against certain demographic classes. To safeguard that a given sensitive user's attribute does not systematically affect the reputation of that user, prior work has operationalized a reputation independence constraint on this class of systems. In this paper, we uncover that guaranteeing reputation independence for a single sensitive attribute is not enough. When mitigating biases based on one sensitive attribute (e.g., gender), the final ranking might still be biased against certain demographic groups formed…
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