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Examine os métodos selecionados lado a lado; as linhas que diferem ficam destacadas.

Regularized LightGBM×CatBoost×Gradient Boosting Regularizado×
ÁreaAprendizado de máquinaAprendizado de máquinaAprendizado de máquina
FamíliaMachine learningMachine learningMachine learning
Ano de origem201720182001 (gradient boosting); 2016 (explicit L1/L2 regularization in XGBoost)
Autor originalKe, G. et al. (Microsoft Research)Prokhorenkova, L. et al. (Yandex)Chen, T. & Guestrin, C. (building on Friedman, J. H.)
TipoRegularized gradient boosting ensembleGradient boosting on decision treesRegularized ensemble (additive tree model)
Fonte seminalKe, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W., Ye, Q., & Liu, T.-Y. (2017). LightGBM: A highly efficient gradient boosting decision tree. Advances in Neural Information Processing Systems, 30, 3146–3154. link ↗Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V. & Gulin, A. (2018). CatBoost: Unbiased Boosting with Categorical Features. In NeurIPS 2018. DOI ↗Chen, T. & Guestrin, C. (2016). XGBoost: A scalable tree boosting system. Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 785–794. DOI ↗
Outros nomesLightGBM with L1/L2 regularization, penalized LightGBM, LightGBM ridge/lasso, regularized LGBMCatBoost (Categorical Boosting), categorical boosting, ordered boosting, kategorik gradyan artırmapenalized gradient boosting, shrinkage-regularized boosting, XGBoost-style regularization, L1/L2 gradient boosting
Relacionados556
ResumoRegularized LightGBM applies L1 (lasso) and L2 (ridge) penalty terms to the leaf weight objective of LightGBM — Microsoft's highly efficient gradient boosting framework — to control model complexity, reduce overfitting, and improve generalization on tabular classification and regression tasks with high-dimensional or noisy feature sets.CatBoost is a gradient boosting algorithm, introduced by Prokhorenkova and colleagues at Yandex in 2018, that handles categorical variables natively and uses ordered target encoding to avoid label leakage. By building an additive ensemble of trees while permuting the data order at each iteration, it is often superior to XGBoost and LightGBM on category-heavy data.Regularized gradient boosting extends the classic additive tree ensemble (Friedman 2001) by embedding L1 and L2 penalty terms directly into the training objective, along with a complexity penalty on tree size. Popularized by XGBoost (Chen & Guestrin 2016), this framework reduces overfitting and improves generalization compared to unpenalized boosting, while retaining the method's characteristic accuracy on tabular data.
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ScholarGateComparar métodos: Regularized LightGBM · CatBoost · Regularized Gradient Boosting. Recuperado em 2026-06-17 de https://scholargate.app/pt/compare