English

Cheeger-type approximation for sparsest $st$-cut

Data Structures and Algorithms 2016-09-26 v2

Abstract

We introduce the stst-cut version the Sparsest-Cut problem, where the goal is to find a cut of minimum sparsity among those separating two distinguished vertices s,tVs,t\in V. Clearly, this problem is at least as hard as the usual (non-stst) version. Our main result is a polynomial-time algorithm for the product-demands setting, that produces a cut of sparsity O(\OPT)O(\sqrt{\OPT}), where \OPT\OPT denotes the optimum, and the total edge capacity and the total demand are assumed (by normalization) to be 11. Our result generalizes the recent work of Trevisan [arXiv, 2013] for the non-stst version of the same problem (Sparsest-Cut with product demands), which in turn generalizes the bound achieved by the discrete Cheeger inequality, a cornerstone of Spectral Graph Theory that has numerous applications. Indeed, Cheeger's inequality handles graph conductance, the special case of product demands that are proportional to the vertex (capacitated) degrees. Along the way, we obtain an O(logn)O(\log n)-approximation, where n=\cardVn=\card{V}, for the general-demands setting of Sparsest stst-Cut.

Keywords

Cite

@article{arxiv.1410.3889,
  title  = {Cheeger-type approximation for sparsest $st$-cut},
  author = {Robert Krauthgamer and Tal Wagner},
  journal= {arXiv preprint arXiv:1410.3889},
  year   = {2016}
}
R2 v1 2026-06-22T06:23:47.135Z