Article ID Journal Published Year Pages File Type
4959577 European Journal of Operational Research 2017 15 Pages PDF
Abstract
In this paper, we provide a generic anytime lower bounding procedure for minmax regret optimization problems. We show that the lower bound obtained is always at least as accurate as the lower bound recently proposed by Chassein and Goerigk (2015). This lower bound can be viewed as the optimal value of a linear programming relaxation of a mixed integer programming formulation of minmax regret optimization, but the contribution of the paper is to compute this lower bound via a double oracle algorithm (McMahan, Gordon, & Blum, 2003) that we specify. The double oracle algorithm is designed by relying on a game theoretic view of robust optimization, similar to the one developed by Mastin, Jaillet, and Chin (2015), and it can be efficiently implemented for any minmax regret optimization problem whose standard version is “easy”. We describe how to efficiently embed this lower bound in a branch and bound procedure. Finally we apply our approach to the robust shortest path problem. Our numerical results show a significant gain in the computation times compared to previous approaches in the literature.
Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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