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Poster
Fair k-Center Clustering for Data Summarization
Matthäus Kleindessner · Pranjal Awasthi · Jamie Morgenstern

Thu Jun 13 06:30 PM -- 09:00 PM (PDT) @ Pacific Ballroom #192
In data summarization we want to choose $k$ prototypes in order to summarize a data set. We study a setting where the data set comprises several demographic groups and we are restricted to choose $k_i$ prototypes belonging to group $i$. A common approach to the problem without the fairness constraint is to optimize a centroid-based clustering objective such as $k$-center. A natural extension then is to incorporate the fairness constraint into the clustering problem. Existing algorithms for doing so run in time super-quadratic in the size of the data set, which is in contrast to the standard $k$-center problem being approximable in linear time. In this paper, we resolve this gap by providing a simple approximation algorithm for the $k$-center problem under the fairness constraint with running time linear in the size of the data set and $k$. If the number of demographic groups is small, the approximation guarantee of our algorithm only incurs a constant-factor overhead.

Author Information

Matthäus Kleindessner (Rutgers University)
Pranjal Awasthi (Rutgers University)
Jamie Morgenstern (Georgia Institute of Technology)

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