Результаты исследований: Научные публикации в периодических изданиях › статья › Рецензирование
We present a new modification of the gradient descent algorithm based on the surrogate optimization with projection into low-dimensional space. It iteratively approximates the target function in low-dimensional space and takes the approximation optimum point mapped back to original parameter space as next parameter estimate. Main contribution of the proposed method is in application of projection idea in approximation process. Major advantage of the proposed modification is that it does not change the gradient descent iterations, thus it can be used with some other variants of the gradient descent. We give a theoretical motivation for the proposed algorithm and a theoretical lower bound for its accuracy. Finally, we experimentally study its properties on modelled data.
Язык оригинала | Английский |
---|---|
Страницы (с-по) | 3899-3904 |
Число страниц | 6 |
Журнал | IFAC-PapersOnLine |
Том | 50 |
Номер выпуска | 1 |
DOI | |
Состояние | Опубликовано - 2017 |
Событие | 20th World Congress of the International Federation of Automatic Control - Toulouse, France, Toulouse, Франция Продолжительность: 9 июл 2017 → 14 июл 2017 Номер конференции: 20 |
ID: 11874339