On Copositive Programming and Standard Quadratic Optimization Problems

被引:0
|
作者
Immanuel M. Bomze
Mirjam Dür
Etienne de Klerk
Cornelis Roos
Arie J. Quist
Tamás Terlaky
机构
[1] Universität Wien,ISDS
[2] Vienna University of Economics,Department of Statistics
[3] Delft University of Technology,Faculty ITS/TWI/SSOR
[4] McMaster University Hamilton,Department of Computing and Software
来源
关键词
Copositive programming; Global maximization; Positive semidefinite matrices; Standard quadratic optimization;
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摘要
A standard quadratic problem consists of finding global maximizers of a quadratic form over the standard simplex. In this paper, the usual semidefinite programming relaxation is strengthened by replacing the cone of positive semidefinite matrices by the cone of completely positive matrices (the positive semidefinite matrices which allow a factorization FFT where F is some non-negative matrix). The dual of this cone is the cone of copositive matrices (i.e., those matrices which yield a non-negative quadratic form on the positive orthant). This conic formulation allows us to employ primal-dual affine-scaling directions. Furthermore, these approaches are combined with an evolutionary dynamics algorithm which generates primal-feasible paths along which the objective is monotonically improved until a local solution is reached. In particular, the primal-dual affine scaling directions are used to escape from local maxima encountered during the evolutionary dynamics phase.
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页码:301 / 320
页数:19
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