Superlinearly Convergent Quasi-Newton Algorithms for Nonlinearly Constrained Optimization Problems
Loading...
Files
Date
Authors
Palomares, U.M. Garcia
Mangasarian, O.L.
Advisors
License
DOI
Type
Technical Report
Journal Title
Journal ISSN
Volume Title
Publisher
University of Wisconsin-Madison Department of Computer Sciences
Grantor
Abstract
A class of algorithms for nonlinearly constrained optimization problems is proposed. The subproblems of the algorithms are linearly constrained quadratic minimization problems which contain an updated estimate of the Hessian of the Lagrangian. Under suitable conditions and updating schemes local convergence and
a super1inear rate of convergence are established. The convergence proofs require among other things twice differentiable objective and constraint functions, while the calculations use only first derivative data. Rapid convergence has been obtained in a number of test problems by using a program based on the algorithms proposed here.
Description
Keywords
Related Material and Data
Citation
TR195