A Combined D.C. Optimization—Ellipsoidal Branch-and-Bound Algorithm for Solving Nonconvex Quadratic Programming Problems
https://doi.org/10.1023/A:1009777410170Publisher, magazine: ,
Publication year: 1998
Lưu Trích dẫn Chia sẻAbstract
In this paper we propose a new branch-and-bound algorithm by using an ellipsoidal partition for minimizing an indefinite quadratic function over a bounded polyhedral convex set which is not necessarily given explicitly by a system of linear inequalities and/or equalities. It is required that for this set there exists an efficient algorithm to verify whether a point is feasible, and to find a violated constraint if this point is not feasible. The algorithm is based upon the fact that the problem of minimizing an indefinite quadratic form over an ellipsoid can be efficiently solved by some available (polynomial and nonpolynomial time) algorithms. In particular, the d.c. (difference of convex functions) algorithm (DCA) with restarting procedure recently introduced by Pham Dinh Tao and L.T. Hoai An is applied to globally solving this problem. DCA is also used for locally solving the nonconvex quadratic program. It is restarted with current best feasible points in the branch-and-bound scheme, and improved them in its turn. The combined DCA-ellipsoidal branch-and-bound algorithm then enhances the convergence: it reduces considerably the upper bound and thereby a lot of ellipsoids can be eliminated from further consideration. Several numerical experiments are given.
Tags: indefinite quadratic programming, branch-and-bound, ellipsoid methods, d.c. optimization, ball constrained quadratic problem
Các bài viết liên quan đến tác giả Lê Thị Hoài An
Towards Tikhonov regularization of non-linear ill-posed problems: a dc programming approach
Solving an inverse problem for an elliptic equation by d.c. programming
Simplicially-constrained DC optimization over efficient and weakly efficient sets
On the ill-posedness of the trust region subproblem
Exact penalty in d.c. programming
Numerical solution for optimization over the efficient set by d.c. optimization algorithms
Convex analysis approach to d.c. programming: theory, algorithms and applications