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Controlling Fairness and Bias in Dynamic Learning-to-Rank (Extended Abstract)
2021
Proceedings of the Thirtieth International Joint Conference on Artificial Intelligence
unpublished
Rankings are the primary interface through which many online platforms match users to items (e.g. news, products, music, video). In these two-sided markets, not only do the users draw utility from the rankings, but the rankings also determine the utility (e.g. exposure, revenue) for the item providers (e.g. publishers, sellers, artists, studios). It has already been noted that myopically optimizing utility to the users -- as done by virtually all learning-to-rank algorithms -- can be unfair to
doi:10.24963/ijcai.2021/655
fatcat:ga3ixkc3ejg65mwr3fjltemkwa