2021
DOI: 10.48550/arxiv.2105.12353
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Private Recommender Systems: How Can Users Build Their Own Fair Recommender Systems without Log Data?

Abstract: Fairness is an important property in data-mining applications, including recommender systems. In this work, we investigate a case where users of a recommender system need (or want) to be fair to a protected group of items. For example, in a job market, the user is the recruiter, an item is the job seeker, and the protected attribute is gender or race. Even if recruiters want to use a fair talent recommender system, the platform may not provide a fair recommender system, or recruiters may not be able to ascerta… Show more

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