Отрывок: A symmetric piecewise-linear decision tree is a piecewise-linear decision tree that has all the levels of the tree completely filled, all nodes on the same level have the same splitting rule and common left linear coefficient and right linear coefficient. Such kind of trees are simpler than general piecewise-linear decision trees and can be considered as a method of regularization. They also have an increased prediction speed, having a greater degree of utilization of modern CPU...
Название : Oblivious piecewise-linear decision trees
Авторы/Редакторы : Gurianov A.
Дата публикации : 2022
Библиографическое описание : Gurianov, A. Oblivious piecewise-linear decision trees / A. Gurianov // Информационные технологии и нанотехнологии (ИТНТ-2022) : сб. тр. по материалам VIII Междунар. конф. и молодеж. шк. (г. Самара, 23 - 27 мая) : в 5 т. / М-во науки и образования Рос. Федерации, Самар. нац. исслед. ун-т им. С. П. Королева (Самар. ун-т), Ин-т систем обраб. изобр. РАН - фил. ФНИЦ "Кристаллография и фотоника" РАН. - Самара : Изд-во Самар. ун-та, 2022Т. 5: Науки о данных / под ред. А. В. Куприянова. - 2022. - С. 053462.
Аннотация : Gradient boosting ensembles of decision trees are a very popular type of machine learning model, with several popular implementations. Some of those implementations utilize symmetric decision trees - decision trees of a specific structure that improve regularization and speed predictions. Over the last years, several research works have been published related to piecewise-linear decision trees and their utilization in gradient boosting ensembles. In this paper, symmetric piecewise-linear decision trees were introduced, and it was shown that it ispossible to efficiently train such trees in gradient boosting ensembles. It was shown that such symmetric piecewise-lineardecision trees have significantly faster prediction time compared to regular decision trees and piecewise-linear decision trees ofsimilar depths and that ensembles of symmetric piecewise-linear decision trees achieve competitive quality on open datasets.
Другие идентификаторы : RU\НТБ СГАУ\496000
Ключевые слова: Decision trees
gradient boosting
machine learning
piecewise-linear decision trees
градиентное усиление
деревья решений
кусочно-линейные деревья решений
машинное обучение
Располагается в коллекциях: Информационные технологии и нанотехнологии

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