Spectrahedral relaxations of Eulerian rigidly convex sets
Alejandro Gonz\'alez Nevado

TL;DR
This paper investigates spectrahedral relaxations of rigidly convex sets derived from multivariate Eulerian polynomials, demonstrating highly accurate approximations, especially along the diagonal, and providing improved bounds for roots compared to existing literature.
Contribution
It introduces a spectrahedral relaxation approach for rigidly convex sets associated with multivariate Eulerian polynomials, enhancing approximation accuracy and root bounds.
Findings
Spectrahedral relaxations closely approximate the rigidly convex sets.
The method yields better bounds for Eulerian polynomial roots than previous results.
Approximation accuracy is especially high along the diagonal.
Abstract
We study a generalization of Eulerian polynomials to the multivariate setting introduced by Br\"and\'en. Although initially these polynomials were introduced using the language of hyperbolic and stable polynomials, we manage to translate some restrictions of these polynomials to our real zero setting. Once we are in this setting, we focus our attention on the rigidly convex sets (RCSs) defined by these polynomials. In particular, we study the corresponding rigidly convex sets looking at spectrahedral relaxations constructed through the use of monic symmetric linear matrix polynomials (MSLMPs) of small size and depending polynomially (actually just cubically) on the coefficients of the corresponding polynomials. We analyze how good are the obtained spectrahedral approximations to these rigidly convex sets. We do this analysis by measuring the behavior along the diagonal, where we…
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