Near-optimal Coresets for Robust Clustering

October 19, 2022 Β· Declared Dead Β· πŸ› International Conference on Learning Representations

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Authors Lingxiao Huang, Shaofeng H. -C. Jiang, Jianing Lou, Xuan Wu arXiv ID 2210.10394 Category cs.DS: Data Structures & Algorithms Citations 20 Venue International Conference on Learning Representations Last Checked 3 months ago
Abstract
We consider robust clustering problems in $\mathbb{R}^d$, specifically $k$-clustering problems (e.g., $k$-Median and $k$-Means with $m$ outliers, where the cost for a given center set $C \subset \mathbb{R}^d$ aggregates the distances from $C$ to all but the furthest $m$ data points, instead of all points as in classical clustering. We focus on the $Ξ΅$-coreset for robust clustering, a small proxy of the dataset that preserves the clustering cost within $Ξ΅$-relative error for all center sets. Our main result is an $Ξ΅$-coreset of size $O(m + \mathrm{poly}(k Ξ΅^{-1}))$ that can be constructed in near-linear time. This significantly improves previous results, which either suffers an exponential dependence on $(m + k)$ [Feldman and Schulman, SODA'12], or has a weaker bi-criteria guarantee [Huang et al., FOCS'18]. Furthermore, we show this dependence in $m$ is nearly-optimal, and the fact that it is isolated from other factors may be crucial for dealing with large number of outliers. We construct our coresets by adapting to the outlier setting a recent framework [Braverman et al., FOCS'22] which was designed for capacity-constrained clustering, overcoming a new challenge that the participating terms in the cost, particularly the excluded $m$ outlier points, are dependent on the center set $C$. We validate our coresets on various datasets, and we observe a superior size-accuracy tradeoff compared with popular baselines including uniform sampling and sensitivity sampling. We also achieve a significant speedup of existing approximation algorithms for robust clustering using our coresets.
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