Caroline Klivans
Brown University · Applied Mathematics
Active 2004–2023
Research topics
- Computer Science
- Mathematics
- Statistics
- Combinatorics
- Mathematical optimization
- Mathematical analysis
- Algorithm
- Discrete mathematics
Selected publications
Clustering with Semidefinite Programming and Fixed Point Iteration
arXiv (Cornell University) · 2020 · 1 citations
- Computer Science
- Mathematics
- Combinatorics
We introduce a novel method for clustering using a semidefinite programming (SDP) relaxation of the Max k-Cut problem. The approach is based on a new methodology for rounding the solution of an SDP relaxation using iterated linear optimization. We show the vertices of the Max k-Cut relaxation correspond to partitions of the data into at most k sets. We also show the vertices are attractive fixed points of iterated linear optimization. Each step of this iterative process solves a relaxation of the closest vertex problem and leads to a new clustering problem where the underlying clusters are more clearly defined. Our experiments show that using fixed point iteration for rounding the Max k-Cut SDP relaxation leads to significantly better results when compared to randomized rounding.
Frequent coauthors
- 21 shared
Art M. Duval
- 21 shared
Jeremy L. Martin
University of Kansas
- 16 shared
Pedro F. Felzenszwalb
- 15 shared
Johnny Guzmán
Brown University
- 11 shared
Alice Paul
Brown University
- 10 shared
Victor Reiner
- 8 shared
Sayan Mukherjee
- 6 shared
Olivier Bernardi
Brandeis University
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