Understanding and Mitigating Multi-Sided Exposure Bias in Recommender Systems
Masoud Mansoury

TL;DR
This paper investigates multi-sided exposure bias in recommender systems, proposing pre- and post-processing solutions to improve fairness for items and suppliers, validated through extensive experiments on public datasets.
Contribution
It introduces novel rating transformation and graph-based post-processing methods to mitigate multi-sided exposure bias in recommendations.
Findings
Proposed metrics effectively measure exposure fairness.
Experimental results show improved fairness with the new methods.
Solutions outperform baselines in fairness metrics.
Abstract
Fairness is a critical system-level objective in recommender systems that has been the subject of extensive recent research. It is especially important in multi-sided recommendation platforms where it may be crucial to optimize utilities not just for the end user, but also for other actors such as item sellers or producers who desire a fair representation of their items. Existing solutions do not properly address various aspects of multi-sided fairness in recommendations as they may either solely have one-sided view (i.e. improving the fairness only for one side), or do not appropriately measure the fairness for each actor involved in the system. In this thesis, I aim at first investigating the impact of unfair recommendations on the system and how these unfair recommendations can negatively affect major actors in the system. Then, I seek to propose solutions to tackle the unfairness of…
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