English

Geometric Random Edge

Data Structures and Algorithms 2016-03-22 v5 Computational Geometry

Abstract

We show that a variant of the random-edge pivoting rule results in a strongly polynomial time simplex algorithm for linear programs max{cTx ⁣:Axb}\max\{c^Tx \colon Ax\leq b\}, whose constraint matrix AA satisfies a geometric property introduced by Brunsch and R\"oglin: The sine of the angle of a row of AA to a hyperplane spanned by n1n-1 other rows of AA is at least δ\delta. This property is a geometric generalization of AA being integral and all sub-determinants of AA being bounded by Δ\Delta in absolute value (since δ1/(Δ2n)\delta \geq 1/(\Delta^2 n)). In particular, linear programs defined by totally unimodular matrices are captured in this famework (δ1/n\delta \geq 1/ n) for which Dyer and Frieze previously described a strongly polynomial-time randomized algorithm. The number of pivots of the simplex algorithm is polynomial in the dimension and 1/δ1/\delta and independent of the number of constraints of the linear program. Our main result can be viewed as an algorithmic realization of the proof of small diameter for such polytopes by Bonifas et al., using the ideas of Dyer and Frieze.

Keywords

Cite

@article{arxiv.1404.1568,
  title  = {Geometric Random Edge},
  author = {Friedrich Eisenbrand and Santosh Vempala},
  journal= {arXiv preprint arXiv:1404.1568},
  year   = {2016}
}
R2 v1 2026-06-22T03:44:01.633Z