We propose a feasible active set method for convex quadratic programming prob-
lems with nonnegativity constraints. This method is specifically designed to be embedded into
a branch-and-bound algorithm for convex quadratic mixed- integer programming problems. The
branch-and-bound algorithm generalizes the approach for unconstrained convex quadratic integer
programming proposed by Buchheim, Caprara, and Lodi [ Math. Program., 135 (2012), pp. 369–
395] to the presence of linear constraints. The main feature of the latter approach consists of a
sophisticated preprocessing phase, leading to a fast enumeration of the branch-and-bound nodes.
Moreover, the feasible active set method takes advantage of this preprocessing phase and is well
suited for reoptimization. Experimental results for randomly generated instances show that the new
approach significantly outperforms the MIQP solver of CPLEX 12.6 for instances with a small number
of constraints.
Dettaglio pubblicazione
2016, SIAM JOURNAL ON OPTIMIZATION, Pages 1695-1714 (volume: 26)
A feasible active set method with reoptimization for convex quadratic mixed-integer programming (01a Articolo in rivista)
Buchheim Christoph, De Santis Marianna, Lucidi Stefano, Rinaldi Francesco, Trieu Long
Gruppo di ricerca: Continuous Optimization
keywords