Global convergence rate analysis of unconstrained optimization methods based on probabilistic models
We 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 counterpar...
Главные авторы: | Cartis, C, Scheinberg, K |
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Формат: | Journal article |
Опубликовано: |
Springer Berlin Heidelberg
2017
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