English

Complex Semidefinite Programming and Max-k-Cut

Data Structures and Algorithms 2018-12-31 v1

Abstract

In a second seminal paper on the application of semidefinite programming to graph partitioning problems, Goemans and Williamson showed how to formulate and round a complex semidefinite program to give what is to date still the best-known approximation guarantee of .836008 for Max-33-Cut. (This approximation ratio was also achieved independently by De Klerk et al.) Goemans and Williamson left open the problem of how to apply their techniques to Max-kk-Cut for general kk. They point out that it does not seem straightforward or even possible to formulate a good quality complex semidefinite program for the general Max-kk-Cut problem, which presents a barrier for the further application of their techniques. We present a simple rounding algorithm for the standard semidefinite programmming relaxation of Max-kk-Cut and show that it is equivalent to the rounding of Goemans and Williamson in the case of Max-33-Cut. This allows us to transfer the elegant analysis of Goemans and Williamson for Max-3-Cut to Max-kk-Cut. For k4k \geq 4, the resulting approximation ratios are about .01.01 worse than the best known guarantees. Finally, we present a generalization of our rounding algorithm and conjecture (based on computational observations) that it matches the best-known guarantees of De Klerk et al.

Keywords

Cite

@article{arxiv.1812.10770,
  title  = {Complex Semidefinite Programming and Max-k-Cut},
  author = {Alantha Newman},
  journal= {arXiv preprint arXiv:1812.10770},
  year   = {2018}
}

Comments

Appeared in Proceedings of SOSA 2018