Deterministic Clustering in High Dimensional Spaces: Sketches and Approximation

Abstract

In all state-of-the-art sketching and coreset techniques for clustering, as well as in the best known fixed-parameter tractable approximation algorithms, randomness plays a key role. For the classic k-median and k-means problems, there are no known deterministic dimensionality reduction procedure or coreset construction that avoid an exponential dependency on the input dimension d, the precision parameter -1 or k. Furthermore, there is no coreset construction that succeeds with probability 1-1/n and whose size does not depend on the number of input points, n. This has led researchers in the area to ask what is the power of randomness for clustering sketches [Feldman, WIREs Data Mining Knowl. Discov'20]. Similarly, the best approximation ratio achievable deterministically without a complexity exponential in the dimension are (1) for both k-median and k-means, even when allowing a complexity FPT in the number of clusters k. This stands in sharp contrast with the (1+)-approximation achievable in that case, when allowing randomization. In this paper, we provide deterministic sketches constructions for clustering, whose size bounds are close to the best-known randomized ones. We also construct a deterministic algorithm for computing (1+)-approximation to k-median and k-means in high dimensional Euclidean spaces in time 2k2/O(1) poly(nd), close to the best randomized complexity. Furthermore, our new insights on sketches also yield a randomized coreset construction that uses uniform sampling, that immediately improves over the recent results of [Braverman et al. FOCS '22] by a factor k.

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