MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)

A recent approach for the construction of nonlinear optimization software has been to allow an algorithm to choose between two possible models to the objective function at each iteration. The model switching algorithm NL2SOL of Dennis, Gay and Welsch and the hybrid algorithms of Al-Baali and Fletche...

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Main Author: CARTER, RICHARD GORDON
Format: Others
Language:English
Published: 2007
Subjects:
Online Access:http://hdl.handle.net/1911/15960
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spelling ndltd-RICE-oai-scholarship.rice.edu-1911-159602013-10-23T04:07:35ZMULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)CARTER, RICHARD GORDONMathematicsA recent approach for the construction of nonlinear optimization software has been to allow an algorithm to choose between two possible models to the objective function at each iteration. The model switching algorithm NL2SOL of Dennis, Gay and Welsch and the hybrid algorithms of Al-Baali and Fletcher has proven highly effective in practice. Although not explicitly formulated as multi-model methods, many other algorithms implicitly perform a model switch under certain circumstances (e.g., resetting a secant model to the exact value of the Hessian). We present a trust region formulation for multi-model methods which allows the efficient incorporation of an arbitrary number of models. Global convergence can be shown for three classes of algorithms under different assumptions on the models. First, essentially any multi-model algorithm is globally convergent if each of the models is sufficiently well behaved. Second, algorithms based on the central feature of the NL2SOL switching system are globally convergent if one model is well behaved and each other model obeys a "sufficient predicted decrease" condition. No requirement is made that these alternate models be quadratic. Third, algorithms of the second type which directly enforce the "sufficient predicted decrease" condition are globally convergent if a single model is sufficiently well behaved.2007-05-09T19:40:52Z2007-05-09T19:40:52Z1986ThesisTextapplication/pdfhttp://hdl.handle.net/1911/15960eng
collection NDLTD
language English
format Others
sources NDLTD
topic Mathematics
spellingShingle Mathematics
CARTER, RICHARD GORDON
MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
description A recent approach for the construction of nonlinear optimization software has been to allow an algorithm to choose between two possible models to the objective function at each iteration. The model switching algorithm NL2SOL of Dennis, Gay and Welsch and the hybrid algorithms of Al-Baali and Fletcher has proven highly effective in practice. Although not explicitly formulated as multi-model methods, many other algorithms implicitly perform a model switch under certain circumstances (e.g., resetting a secant model to the exact value of the Hessian). We present a trust region formulation for multi-model methods which allows the efficient incorporation of an arbitrary number of models. Global convergence can be shown for three classes of algorithms under different assumptions on the models. First, essentially any multi-model algorithm is globally convergent if each of the models is sufficiently well behaved. Second, algorithms based on the central feature of the NL2SOL switching system are globally convergent if one model is well behaved and each other model obeys a "sufficient predicted decrease" condition. No requirement is made that these alternate models be quadratic. Third, algorithms of the second type which directly enforce the "sufficient predicted decrease" condition are globally convergent if a single model is sufficiently well behaved.
author CARTER, RICHARD GORDON
author_facet CARTER, RICHARD GORDON
author_sort CARTER, RICHARD GORDON
title MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
title_short MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
title_full MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
title_fullStr MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
title_full_unstemmed MULTI-MODEL ALGORITHMS FOR OPTIMIZATION (TRUST REGIONS, NONLINEAR LEAST SQUARES, SECANT, HYBRID METHODS, MODEL SWITCHING)
title_sort multi-model algorithms for optimization (trust regions, nonlinear least squares, secant, hybrid methods, model switching)
publishDate 2007
url http://hdl.handle.net/1911/15960
work_keys_str_mv AT carterrichardgordon multimodelalgorithmsforoptimizationtrustregionsnonlinearleastsquaressecanthybridmethodsmodelswitching
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