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Poster

Fully Dynamic k-Clustering in O~(k) Update Time

Sayan Bhattacharya · Martín Costa · Silvio Lattanzi · Nikos Parotsidis

Great Hall & Hall B1+B2 (level 1) #1102

Abstract: We present a O(1)-approximate fully dynamic algorithm for the k-median and k-means problems on metric spaces with amortized update time O~(k) and worst-case query time O~(k2). We complement our theoretical analysis with the first in-depth experimental study for the dynamic k-median problem on general metrics, focusing on comparing our dynamic algorithm to the current state-of-the-art by Henzinger and Kale [ESA'20]. Finally, we also provide a lower bound for dynamic k-median which shows that any O(1)-approximate algorithm with O~(poly(k)) query time must have Ω~(k) amortized update time, even in the incremental setting.

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