2021
DOI: 10.48550/arxiv.2111.08563
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Rank-Regret Minimization

Abstract: Multi-criteria decision-making often requires finding a small representative subset from the database. A recently proposed method is the regret minimization set (RMS) query. RMS returns a fixed size subset S of dataset D that minimizes the regret ratio of S (the difference between the score of top-1 in S and the score of top-1 in D, for any possible utility function). Existing work showed that the regret-ratio is not able to accurately quantify the "regret" level of a user. Further, relative to the regret-rati… Show more

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