Online Coresets for Clustering with Bregman Divergences
December 11, 2020 Β· Declared Dead Β· π arXiv.org
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Authors
Rachit Chhaya, Jayesh Choudhari, Anirban Dasgupta, Supratim Shit
arXiv ID
2012.06522
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.LG
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
We present algorithms that create coresets in an online setting for clustering problems according to a wide subset of Bregman divergences. Notably, our coresets have a small additive error, similar in magnitude to the lightweight coresets Bachem et. al. 2018, and take update time $O(d)$ for every incoming point where $d$ is dimension of the point. Our first algorithm gives online coresets of size $\tilde{O}(\mbox{poly}(k,d,Ξ΅,ΞΌ))$ for $k$-clusterings according to any $ΞΌ$-similar Bregman divergence. We further extend this algorithm to show existence of a non-parametric coresets, where the coreset size is independent of $k$, the number of clusters, for the same subclass of Bregman divergences. Our non-parametric coresets are larger by a factor of $O(\log n)$ ($n$ is number of points) and have similar (small) additive guarantee. At the same time our coresets also function as lightweight coresets for non-parametric versions of the Bregman clustering like DP-Means. While these coresets provide additive error guarantees, they are also significantly smaller (scaling with $O(\log n)$ as opposed to $O(d^d)$ for points in $R^d$) than the (relative-error) coresets obtained in Bachem et. al. 2015 for DP-Means. While our non-parametric coresets are existential, we give an algorithmic version under certain assumptions.
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