4.5 Article

Correlation Clustering and Biclustering With Locally Bounded Errors

Journal

IEEE TRANSACTIONS ON INFORMATION THEORY
Volume 64, Issue 6, Pages 4105-4119

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIT.2018.2819696

Keywords

Clustering methods; approximation algorithms

Funding

  1. NSF [IOS 1339388, CCF 1527636, CCF 1526875]
  2. CCF Grant [1117980]
  3. IC Postdoctoral Program

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We consider a generalized version of the correlation clustering problem, defined as follows. Given a complete graph G whose edges are labeled with + or -, we wish to partition the graph into clusters while trying to avoid errors: + edges between clusters or - edges within clusters. Classically, one seeks to minimize the total number of such errors. We introduce a new framework that allows the objective to be a more general function of the number of errors at each vertex (for example, we may wish to minimize the number of errors at the worst vertex) and provides a rounding algorithm which converts fractional clusterings into discrete clusterings while causing only a constant-factor blowup in the number of errors at each vertex. This rounding algorithm yields constant-factor approximation algorithms for the discrete problem under a wide variety of objective functions.

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