Modifications of the Limited Memory BFGS Algorithm for Large-scale Nonlinear Optimization

Volume: 47, Issue: 1, Pages: 175 - 188
Published: Jan 1, 2005
Abstract
In this paper we present two new numerical methods for unconstrained large-scale optimization. These methods apply update formulae, which are derived by considering different techniques of approximating the objective function. Theoretical analysis is given to show the advantages of using these update formulae. It is observed that these update formulae can be employed within the framework of limited memory strategy with only a modest increase in...
Paper Details
Title
Modifications of the Limited Memory BFGS Algorithm for Large-scale Nonlinear Optimization
Published Date
Jan 1, 2005
Volume
47
Issue
1
Pages
175 - 188
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