Noisy k-means++ Revisited
July 25, 2023 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Christoph Grunau, Ahmet Alper ΓzΓΌdoΔru, VΓ‘clav RozhoΕ
arXiv ID
2307.13685
Category
cs.DS: Data Structures & Algorithms
Citations
2
Venue
Embedded Systems and Applications
Last Checked
4 months ago
Abstract
The $k$-means++ algorithm by Arthur and Vassilvitskii [SODA 2007] is a classical and time-tested algorithm for the $k$-means problem. While being very practical, the algorithm also has good theoretical guarantees: its solution is $O(\log k)$-approximate, in expectation. In a recent work, Bhattacharya, Eube, Roglin, and Schmidt [ESA 2020] considered the following question: does the algorithm retain its guarantees if we allow for a slight adversarial noise in the sampling probability distributions used by the algorithm? This is motivated e.g. by the fact that computations with real numbers in $k$-means++ implementations are inexact. Surprisingly, the analysis under this scenario gets substantially more difficult and the authors were able to prove only a weaker approximation guarantee of $O(\log^2 k)$. In this paper, we close the gap by providing a tight, $O(\log k)$-approximate guarantee for the $k$-means++ algorithm with noise.
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