Dual Bounds and Optimality Cuts for All-Quadratic Programs with Convex Constraints |
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Authors: | Ivo Nowak |
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Affiliation: | (1) Humboldt-Universität zu Berlin, Rudower Chaussee 25, D-10099 Berlin, Germany |
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Abstract: | A central problem of branch-and-bound methods for global optimization is that often a lower bound do not match with the optimal value of the corresponding subproblem even if the diameter of the partition set shrinks to zero. This can lead to a large number of subdivisions preventing the method from terminating in reasonable time. For the all-quadratic optimization problem with convex constraints we present optimality cuts which cut off a given local minimizer from the feasible set. We propose a branch-and-bound algorithm using optimality cuts which is finite if all global minimizers fulfill a certain second order optimality condition. The optimality cuts are based on the formulation of a dual problem where additional redundant constraints are added. This technique is also used for constructing tight lower bounds. Moreover we present for the box-constrained and the standard quadratic programming problem dual bounds which have under certain conditions a zero duality gap. |
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Keywords: | Global optimization Nonconvex quadratic programming Lagrangian relaxation Optimality cuts Duality gap |
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