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arxiv: 1709.07629 · v1 · pith:Z5SZQPJSnew · submitted 2017-09-22 · 🧮 math.OC

Tolerances, robustness and parametrization of matrix properties related to optimization problems

classification 🧮 math.OC
keywords matrixpropertyrelateddataanalysisgiveninverseoptimization
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When we speak about parametric programming, sensitivity analysis, or related topics, we usually mean the problem of studying specified perturbations of the data such that for a given optimization problem some optimality criterion remains satisfied. In this paper, we turn to another question. Suppose that $A$ is a matrix having a specific property $\mathcal{P}$. What are the maximal allowable variations of the data such that the property still remains valid for the matrix? We study two basic forms of perturbations. The first is a perturbation in a given direction, which is closely related to parametric programming. The second type consists of all possible data variations in a neighbourhood specified by a certain matrix norm; this is related to the tolerance approach to sensitivity analysis, or to stability. The matrix properties discussed in this paper are positive definiteness; P-matrix, H-matrix and P-matrix property; total positivity; inverse M-matrix property and inverse nonnegativity.

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