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A weighted gram-schmidt method for convex quadratic programming
Authors:Philip E Gill  Nicholas I M Gould  Walter Murray  Michael A Saunders  Margaret H Wright
Institution:(1) Systems Optimization Laboratory, Department of Operations Research, Stanford University, 94305 Stanford, CA, USA;(2) Present address: Department of Combinatorics and Optimization, University of Waterloo, Ontario, Canada
Abstract:Range-space methods for convex quadratic programming improve in efficiency as the number of constraints active at the solution decreases. In this paper we describe a range-space method based upon updating a weighted Gram-Schmidt factorization of the constraints in the active set. The updating methods described are applicable to both primal and dual quadratic programming algorithms that use an active-set strategy. Many quadratic programming problems include simple bounds on all the variables as well as general linear constraints. A feature of the proposed method is that it is able to exploit the structure of simple bound constraints. This allows the method to retain efficiency when the number ofgeneral constraints active at the solution is small. Furthermore, the efficiency of the method improves as the number of active bound constraints increases. This research was supported by the U.S. Department of Energy Contract DE-AC03-76SF00326, PA No. DE-AT03-76ER72018; National Science Foundation Grants MCS-7926009 and ECS-8012974; the Office of Naval Research Contract N00014-75-C-0267; and the U.S. Army Research Office Contract DAAG29-79-C-0110. The work of Nicholas Gould was supported by the Science and Engineering Research Council of Great Britain.
Keywords:Convex Quadratic Programming  Range-Space Methods  Active-Set Methods  Updated Orthogonal Factorizations  Bound Constraints
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