Author
Cartis, C
Scheinberg, K
Journal title
Mathematical Programming
DOI
10.1007/s10107-017-1137-4
Last updated
2024-04-10T10:00:15.983+01:00
Page
1-39
Abstract
© 2017 Springer-Verlag Berlin Heidelberg and Mathematical Optimization SocietyWe present global convergence rates for a line-search method which is based on random first-order models and directions whose quality is ensured only with certain probability. We show that in terms of the order of the accuracy, the evaluation complexity of such a method is the same as its counterparts that use deterministic accurate models; the use of probabilistic models only increases the complexity by a constant, which depends on the probability of the models being good. We particularize and improve these results in the convex and strongly convex case. We also analyze a probabilistic cubic regularization variant that allows approximate probabilistic second-order models and show improved complexity bounds compared to probabilistic first-order methods; again, as a function of the accuracy, the probabilistic cubic regularization bounds are of the same (optimal) order as for the deterministic case.
Symplectic ID
689453
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Publication type
Journal Article
Publication date
01 Apr 2017
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