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  5. A Quasi-Newton L2-Penalty Method for Minimization Subject to Nonlinear Constraints

A Quasi-Newton L2-Penalty Method for Minimization Subject to Nonlinear Constraints

File(s)
95-206.pdf (332.15 KB)
95-206.ps (460.93 KB)
Permanent Link(s)
https://hdl.handle.net/1813/5544
Collections
Cornell Theory Center Technical Reports
Author
Coleman, Thomas F.
Yuan, Wei
Abstract

We present a modified L2 penalty function method for equality constrained optimization problems. The pivotal feature of our algorithm is that at every iterate we invoke a special change of variables to improve the ability of the algorithm to follow the constraint level sets. This change of variables gives rise to a suitable block diagonal approximation to the Hessian which is then used to construct a quasi-Newton method. We show that the complete algorithm is globally convergent with a local Q-superlinearly convergence rate. Preliminary results are given for a few problems.

Date Issued
1995-02
Publisher
Cornell University
Keywords
theory center
Previously Published as
http://techreports.library.cornell.edu:8081/Dienst/UI/1.0/Display/cul.tc/95-206
Type
technical report

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