Low-Distortion Clustering with Ordinal and Limited Cardinal Information
Jakob Burkhardt,
Ioannis Caragiannis,
Karl Fehrs
et al.
Abstract:Motivated by recent work in computational social choice, we extend the metric distortion framework to clustering problems. Given a set of n agents located in an underlying metric space, our goal is to partition them into k clusters, optimizing some social cost objective. The metric space is defined by a distance function d between the agent locations. Information about d is available only implicitly via n rankings, through which each agent ranks all other agents in terms of their distance from her. Still, even… Show more
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