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2019
DOI: 10.48550/arxiv.1911.08719
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A Geometric Branch and Bound Method for a Class of Robust Maximization Problems of Convex Functions

Fengqiao Luo,
Sanjay Mehrotra

Abstract: We investigate robust optimization problems defined for maximizing convex functions. For finite uncertainty set, we develop a geometric branchand-bound algorithmic approach to solve this problem. The geometric branchand-bound algorithm performs sequential piecewise-linear approximations of the convex objective, and solves linear programs to determine lower and upper bounds of nodes specified by the active linear pieces. Finite convergence of the algorithm to an −optimal solution is proved. Numerical results ar… Show more

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