ФАО АГРИС — международная информационная система по сельскохозяйственным наукам и технологиям

Methodology for the identification of relevant loci for milk traits in dairy cattle, using machine learning algorithms

Raschia, María Agustina | Ríos, Pablo Javier | Maizon, Daniel Omar | Demitrio, Daniel | Poli, Mario Andrés


Библиографическая информация
Том 9 Нумерация страниц 101733 ISSN 2215-0161
Издатель
Elsevier Ltd
Другие темы
Mae; Lightgbm; Variance; Milk protein content; Ml; Hxj; Rmse; Ebvm; Fdr; Ebvf; Lgb; Construction of predictive models using machine learning algorithms for the identification of loci that best explain the variance in milk traits of dairy cattle.; Xgboost; Ebvp; Milk fat content; Random forest; Mse; Xgb; Rf; Estimated breeding values; Milk proteins; Single nucleotide polymorphisms
Язык
Английский
Лицензия
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Тип
Journal Article; Text

2024-02-28
2026-02-03
MODS
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