Probabilistic Condition Number Estimates for Real Polynomial Systems II: Structure and Smoothed Analysis

09/10/2018
by   Alperen A. Ergür, et al.
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We consider the sensitivity of real zeros of polynomial systems with respect to perturbation of the coefficients, and extend our earlier probabilistic estimates for the condition number in two directions: (1) We give refined bounds for the condition number of random structured polynomial systems, depending on a variant of sparsity and an intrinsic geometric quantity called dispersion. (2) Given any structured polynomial system P, we prove the existence of a nearby well-conditioned structured polynomial system Q, with explicit quantitative estimates. Our underlying notion of structure is to consider a linear subspace E_i of the space H_d_i of homogeneous n-variate polynomials of degree d_i, let our polynomial system P be an element of E:=E_1×...× E_n-1, and let (E):=(E_1) +...+(E_n-1) be our measure of sparsity. The dispersion σ(E) provides a rough measure of how suitable the tuple E is for numerical solving. Part I of this series studied how to extend probabilistic estimates of a condition number defined by Cucker to a family of measures going beyond the weighted Gaussians often considered in the current literature. We continue at this level of generality, using tools from geometric functional analysis.

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