Adaptive Algorithm for Constrained Least-Squares Problems

被引:0
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作者
Z.F. Li
M.R. Osborne
T. Prvan
机构
[1] Australian National University,National Centre for Epidemiology and Population Health
[2] Australian National University,School of Mathematical Sciences
[3] University of Canberra,School of Mathematics and Statistics
关键词
constrained optimization; nonlinear least squares; SQP methods; Gauss–Newton approximation; quasi-Newton method;
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摘要
This paper is concerned with the implementation and testing of an algorithm for solving constrained least-squares problems. The algorithm is an adaptation to the least-squares case of sequential quadratic programming (SQP) trust-region methods for solving general constrained optimization problems. At each iteration, our local quadratic subproblem includes the use of the Gauss–Newton approximation but also encompasses a structured secant approximation along with tests of when to use this approximation. This method has been tested on a selection of standard problems. The results indicate that, for least-squares problems, the approach taken here is a viable alternative to standard general optimization methods such as the Byrd–Omojokun trust-region method and the Powell damped BFGS line search method.
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页码:423 / 441
页数:18
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