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Gradient Boosting×LightGBM×Online Learning×
OborStrojové učeníStrojové učeníStrojové učení
RodinaMachine learningMachine learningMachine learning
Rok vzniku200120171958–2000s
TvůrceFriedman, J. H.Ke, G. et al. (Microsoft)Rosenblatt, F.; Littlestone, N.; Shalev-Shwartz, S. (key contributors)
TypEnsemble (sequential boosting of decision trees)Gradient boosting decision tree ensembleLearning paradigm (sequential model update)
Původní zdrojFriedman, J. H. (2001). Greedy Function Approximation: A Gradient Boosting Machine. Annals of Statistics, 29(5), 1189–1232. DOI ↗Ke, 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 (NeurIPS) 30, 3146–3154. link ↗Shalev-Shwartz, S. (2011). Online Learning and Online Convex Optimization. Foundations and Trends in Machine Learning, 4(2), 107–194. DOI ↗
Další názvyGradient Boosting (GBM), GBM, gradient boosted trees, gradient boosting machineLightGBM, Light Gradient Boosting Machine, lgbm, leaf-wise gradient boostingincremental learning, sequential learning, streaming learning, online machine learning
Příbuzné556
ShrnutíGradient Boosting is an ensemble learning method, formalised by Jerome H. Friedman in 2001, that combines a sequence of weak learners — typically shallow decision trees — so that each new tree is fitted to minimise the residual errors of the trees before it. It is the core algorithm behind popular implementations such as XGBoost, LightGBM and CatBoost.LightGBM is Microsoft's gradient boosting decision tree implementation, introduced by Ke and colleagues in 2017, that grows trees leaf-wise and bins features into histograms for speed. On large datasets it is much faster than XGBoost while retaining strong predictive accuracy.Online learning is a machine learning paradigm in which a model is updated incrementally as each new data point arrives, rather than being trained once on a fixed dataset. It is essential when data streams continuously, storage is limited, or the underlying distribution shifts over time. Theoretical performance is measured by cumulative regret relative to the best fixed predictor in hindsight.
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ScholarGatePorovnat metody: Gradient Boosting · LightGBM · Online Learning. Získáno 2026-06-18 z https://scholargate.app/cs/compare