Journal article
Correlation Clustering in Data Streams
KJ Ahn, G Cormode, S Guha, A McGregor, A Wirth
Algorithmica | Published : 2021
Open access
Abstract
Clustering is a fundamental tool for analyzing large data sets. A rich body of work has been devoted to designing data-stream algorithms for the relevant optimization problems such as k-center, k-median, and k-means. Such algorithms need to be both time and and space efficient. In this paper, we address the problem of correlation clustering in the dynamic data stream model. The stream consists of updates to the edge weights of a graph on n nodes and the goal is to find a node-partition such that the end-points of negative-weight edges are typically in different clusters whereas the end-points of positive-weight edges are typically in the same cluster. We present polynomial-time, O(n·polylogn..
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Awarded by Google
Funding Acknowledgements
K. J. Ahn: The author is currently at Google, kookjin@google.com. G. Cormode: Supported in part by European Research Council grant ERC-2014-CoG 647557, a Royal Society Wolfson Research Merit Award and the Yahoo Faculty Research Engagement Program. S. Guha: supported by NSF Award CCF-1546141. A. McGregor: Supported by NSF Award CCF-1637536, CCF-1908849, and CCF-1934846. A. Wirth: Supported in part by ARC Future Fellowship FT120100307.