Abstract

We extend the Γ-robustness approach proposed by Bertsimas and Sim for Linear Programs to the case of non-linear impact of parameter variation. The seminal work considered protection from infeasibility over the worst-case variation of coefficients in a constraint, this variation being controlled by an uncertainty budget called Γ. When coefficients are non-linear functions of a parameter subject to uncertainty, we study a piecewise linear approximation of the function, and show that the subproblem of determining the worst-case variation can still be dualized despite the discrete structure of the piecewise linear function. We conduct numerical experiments on three different problems: Capital Budgeting, Generalized Assignment and Knapsack problems to analyze the trade-off between feasibility and objective value for the robust solution of the piecewise linear approximation compared to the nominal solution, and to a simpler binary approximation. Despite the piecewise approximation, the robust solution reveals to remain feasible over the 6800 runs performed in our experiments, with an average deterioration of the objective value of only a few percents.

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