We address combinatorial optimization problems with uncertain coefficients varying over ellipsoidal uncertainty sets. The robust counterpart of such a problem can be rewritten as a second-order cone program(SOCP) with integrality constraints. We propose a branch-and-bound algorithm where dual bounds are computed by means of an active set algorithm. The latter is applied to the Lagrangian dual of the continuous relaxation, where the feasible set of the combinatorial problem is supposed to be given by a separation oracle. The method benefits from the closed form solution of the active set subproblems and from a smart update of pseudo-inverse matrices. We present numerical experiments on randomly generated instances and on instances from different combinatorial problems, including the shortest path and the traveling salesman problem, showing that our new algorithm consistently outperforms the state-of-the art mixed-integer SOCP solver of Gurobi
Dettaglio pubblicazione
2019, MATHEMATICAL PROGRAMMING COMPUTATION, Pages 755-789 (volume: 11)
An Active Set Algorithm for Robust Combinatorial Optimization Based on Separation Oracles (01a Articolo in rivista)
Buchheim Christoph, DE SANTIS Marianna
Gruppo di ricerca: Continuous Optimization