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Main Authors: Schwertner, A. E., Sobral, F. N. C.
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2205.11358
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author Schwertner, A. E.
Sobral, F. N. C.
author_facet Schwertner, A. E.
Sobral, F. N. C.
contents Complexity analysis has become an important tool in the convergence analysis of optimization algorithms. For derivative-free optimization algorithms, it is not different. Interestingly, several constants that appear when developing complexity results hide the dimensions of the problem. This work organizes several results in literature about bounds that appear in derivative-free trust-region algorithms based on linear and quadratic models. All the constants are given explicitly by the quality of the sample set, dimension of the problem and number of sample points. We extend some results to allow "inexact" interpolation sets. We also provide a clearer proof than those already existing in literature for the underdetermined case.
format Preprint
id arxiv_https___arxiv_org_abs_2205_11358
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle On complexity constants of linear and quadratic models for derivative-free trust-region algorithms
Schwertner, A. E.
Sobral, F. N. C.
Optimization and Control
Complexity analysis has become an important tool in the convergence analysis of optimization algorithms. For derivative-free optimization algorithms, it is not different. Interestingly, several constants that appear when developing complexity results hide the dimensions of the problem. This work organizes several results in literature about bounds that appear in derivative-free trust-region algorithms based on linear and quadratic models. All the constants are given explicitly by the quality of the sample set, dimension of the problem and number of sample points. We extend some results to allow "inexact" interpolation sets. We also provide a clearer proof than those already existing in literature for the underdetermined case.
title On complexity constants of linear and quadratic models for derivative-free trust-region algorithms
topic Optimization and Control
url https://arxiv.org/abs/2205.11358