Generating Valid Linear Inequalities for Nonlinear Programs via Sums of Squares

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Abstract

Valid linear inequalities are substantial in linear and convex mixed-integer programming. This article deals with the computation of valid linear inequalities for nonlinear programs. Given a point in the feasible set, we consider the task of computing a tight valid inequality. We reformulate this geometrically as the problem of finding a hyperplane which minimizes the distance to the given point. A characterization of the existence of optimal solutions is given. If the constraints are given by polynomial functions, we show that it is possible to approximate the minimal distance by solving a hierarchy of sum of squares programs. Furthermore, using a result from real algebraic geometry, we show that the hierarchy converges if the relaxed feasible set is bounded. We have implemented our approach, showing that our ideas work in practice.

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Behrends, S., & Schöbel, A. (2020). Generating Valid Linear Inequalities for Nonlinear Programs via Sums of Squares. Journal of Optimization Theory and Applications, 186(3), 911–935. https://doi.org/10.1007/s10957-020-01736-4

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