A semidefinite framework for trust region subproblems with applications to large scale minimization

A semidefinite framework for trust region subproblems with applications to large scale minimization

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Article ID: iaor19981385
Country: Netherlands
Volume: 77
Issue: 2
Start Page Number: 273
End Page Number: 299
Publication Date: May 1997
Journal: Mathematical Programming
Authors: ,
Keywords: programming: parametric
Abstract:

Primal–dual pairs of semidefinite programs provide a general framework for the theory and algorithms for the trust region subproblem (TRS). This latter problem consists in minimizing a general quadratic function subject to a convex quadratic constraint and, therefore, it is a generalization of the minimum eigenvalue problem. The importance of (TRS) is due to the fact that it provides the step in trust region minimization algorithms. The semidefinite framework is studied as an interesting instance of semidefinite programming as well as a tool for viewing known algorithms and deriving new algorithms for (TRS). In particular, a dual simplex type method is studied that solves (TRS) as a parametric eigenvalue problem. This method uses the Lanczos algorithm for the smallest eigenvalue as a black box. Therefore, the essential cost of the algorithm is the matrix–vector multiplication and, thus, sparsity can be exploited. A primal simplex type method provides steps for the so-called hard case. Extensive numerical tests for large sparse problems are discussed. These tests show that the cost of the algorithm is 1 + α(n) times the cost of finding a minimum eigenvalue using the Lanczos algorithm, where 0 < α(n) < 1 is a fraction which decreases as the dimension increases.

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