Large-scale quasi-Newton trust-region methods with low-dimensional linear equality constraints

被引:1
|
作者
Johannes J. Brust
Roummel F. Marcia
Cosmin G. Petra
机构
[1] Argonne National Laboratory,
[2] University of California Merced,undefined
[3] Lawrence Livermore National Laboratory,undefined
关键词
Linear equality constraints; Quasi-Newton; L-BFGS; Trust-region algorithm; Compact representation; Eigendecomposition; Shape-changing norm;
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摘要
We propose two limited-memory BFGS (L-BFGS) trust-region methods for large-scale optimization with linear equality constraints. The methods are intended for problems where the number of equality constraints is small. By exploiting the structure of the quasi-Newton compact representation, both proposed methods solve the trust-region subproblems nearly exactly, even for large problems. We derive theoretical global convergence results of the proposed algorithms, and compare their numerical effectiveness and performance on a variety of large-scale problems.
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页码:669 / 701
页数:32
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