Author
Cartis, C
Gould, N
Toint, P
Journal title
Optimization Methods and Software
DOI
10.1080/10556788.2016.1268136
Issue
6
Volume
32
Last updated
2024-04-11T21:17:32.687+01:00
Page
1273-1298
Abstract
The worst-case behaviour of a general class of regularization algorithms is considered in the case where only objective function values and associated gradient vectors are evaluated. Upper bounds are derived on the number of such evaluations that are needed for the algorithm to produce an approximate first-order critical point whose accuracy is within a user-defined threshold. The analysis covers the entire range of meaningful powers in the regularization term as well as in the Hölder exponent for the gradient. The resulting complexity bounds vary according to the regularization power and the assumed Hölder exponent, recovering known results when available.
Symplectic ID
689740
Favourite
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Publication type
Journal Article
Publication date
17 Apr 2017
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