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A Polynomial-Time Approximation for Pairwise Fair kkk-Median Clustering

16 May 2024
Sayan Bandyapadhyay
E. Chlamtác
Yu. S. Makarychev
A. Vakilian
Yury Makarychev
Ali Vakilian
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Abstract

In this work, we study pairwise fair clustering with ℓ≥2\ell \ge 2ℓ≥2 groups, where for every cluster CCC and every group i∈[ℓ]i \in [\ell]i∈[ℓ], the number of points in CCC from group iii must be at most ttt times the number of points in CCC from any other group j∈[ℓ]j \in [\ell]j∈[ℓ], for a given integer ttt. To the best of our knowledge, only bi-criteria approximation and exponential-time algorithms follow for this problem from the prior work on fair clustering problems when ℓ>2\ell > 2ℓ>2. In our work, focusing on the ℓ>2\ell > 2ℓ>2 case, we design the first polynomial-time O(k2⋅ℓ⋅t)O(k^2\cdot \ell \cdot t)O(k2⋅ℓ⋅t)-approximation for this problem with kkk-median cost that does not violate the fairness constraints. We complement our algorithmic result by providing hardness of approximation results, which show that our problem even when ℓ=2\ell=2ℓ=2 is almost as hard as the popular uniform capacitated kkk-median, for which no polynomial-time algorithm with an approximation factor of o(log⁡k)o(\log k)o(logk) is known.

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@article{bandyapadhyay2025_2405.10378,
  title={ A Polynomial-Time Approximation for Pairwise Fair $k$-Median Clustering },
  author={ Sayan Bandyapadhyay and Eden Chlamtáč and Zachary Friggstad and Mahya Jamshidian and Yury Makarychev and Ali Vakilian },
  journal={arXiv preprint arXiv:2405.10378},
  year={ 2025 }
}
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