| Title: | Oblivious piecewise-linear decision trees |
| Keywords: | Decision trees gradient boosting machine learning piecewise-linear decision trees градиентное усиление деревья решений кусочно-линейные деревья решений машинное обучение |
| Issue Date: | 2022 |
| Citation: | 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. |
| Abstract: | 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. |
| URI: | http://repo.ssau.ru/jspui/handle/123456789/12508 |
| Appears in Collections: | Информационные технологии и нанотехнологии |
Files in This Item:
| File | Size | Format | |
|---|---|---|---|
| ИТНТ-2022. Том 5. Науки о данных/978-5-7883-1793-9_2022-053462.pdf | 740.23 kB | Adobe PDF | View/Open |
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