English

Capacity Lower Bounds via Productization

Combinatorics 2022-09-23 v4 Optimization and Control

Abstract

We give a sharp lower bound on the capacity of a real stable polynomial, depending only on the value of its gradient at x=1x = 1. This result implies a sharp improvement to a similar inequality proved by Linial-Samorodnitsky-Wigderson in 2000, which was crucial to the analysis of their permanent approximation algorithm. Such inequalities have played an important role in the recent work on operator scaling and its generalizations and applications, and in fact we use our bound to construct a new scaling algorithm for real stable polynomials. In addition, we give a strong improvement on previous lower bounds of the capacity of a non-homogeneous real stable polynomial, depending only on the value of its gradient at x=1x = 1. Crucially, this new bound is independent of the degree of the polynomial, and has singly exponential dependence on the number of variables. This compares favorably to the bounds used recently in the fantastic work of Karlin-Klein-Oveis Gharan to give an improved approximation factor for metric TSP, where this dependence is doubly exponential. Such bounds were conjectured to exist by the authors, and thus our new bound should imply further improvement to the approximation factor for metric TSP. The new technique we develop to prove this bound is productization, which says that any real stable polynomial can be approximated at any point in the positive orthant by a product of linear forms. Beyond the results of this paper, our main hope is that this new technique will allow us to avoid "frightening technicalities", in the words of Laurent and Schrijver, that often accompany combinatorial lower bounds.

Keywords

Cite

@article{arxiv.2007.08390,
  title  = {Capacity Lower Bounds via Productization},
  author = {Leonid Gurvits and Jonathan Leake},
  journal= {arXiv preprint arXiv:2007.08390},
  year   = {2022}
}

Comments

STOC 2021; this version has a new and improved bound which should imply improvements to the metric TSP results of Karlin-Klein-Oveis Gharan

R2 v1 2026-06-23T17:10:14.633Z