On Euclidean $k$-Means Clustering with $\alpha$-Center Proximity
Amit Deshpande, Anand Louis, Apoorv Vikram Singh

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Abstract
-means clustering is NP-hard in the worst case but previous work has shown efficient algorithms assuming the optimal -means clusters are \emph{stable} under additive or multiplicative perturbation of data. This has two caveats. First, we do not know how to efficiently verify this property of optimal solutions that are NP-hard to compute in the first place. Second, the stability assumptions required for polynomial time -means algorithms are often unreasonable when compared to the ground-truth clusters in real-world data. A consequence of multiplicative perturbation resilience is \emph{center proximity}, that is, every point is closer to the center of its own cluster than the center of any other cluster, by some multiplicative factor . We study the problem of minimizing the Euclidean -means objective only over clusterings that satisfy -center proximity.…
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TopicsFacility Location and Emergency Management · Anomaly Detection Techniques and Applications · Advanced Clustering Algorithms Research
