Beyond Hirsch Conjecture: walks on random polytopes and smoothed complexity of the simplex method
Roman Vershynin

TL;DR
This paper demonstrates that the smoothed complexity of the simplex method is polylogarithmic in the number of constraints, significantly improving previous bounds and showing short paths on random polytopes.
Contribution
It proves a tighter polylogarithmic bound on the walk length in the simplex method under smoothed analysis and introduces a randomized phase-I approach for linear programming.
Findings
Walk length in smoothed simplex is polylogarithmic in constraints
Improved bounds from polynomial to polylogarithmic complexity
Randomized phase-I method decouples walk from the LP solution
Abstract
The smoothed analysis of algorithms is concerned with the expected running time of an algorithm under slight random perturbations of arbitrary inputs. Spielman and Teng proved that the shadow-vertex simplex method has polynomial smoothed complexity. On a slight random perturbation of an arbitrary linear program, the simplex method finds the solution after a walk on polytope(s) with expected length polynomial in the number of constraints n, the number of variables d and the inverse standard deviation of the perturbation 1/sigma. We show that the length of walk in the simplex method is actually polylogarithmic in the number of constraints n. Spielman-Teng's bound on the walk was O(n^{86} d^{55} sigma^{-30}), up to logarithmic factors. We improve this to O(log^7 n (d^9 + d^3 \s^{-4})). This shows that the tight Hirsch conjecture n-d on the length of walk on polytopes is not a limitation…
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