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분야머신러닝머신러닝머신러닝
계열Machine learningMachine learningMachine learning
기원 연도200120012001
창시자Oza, N. C. & Russell, S.Friedman, J. H.Oza, N. C. & Russell, S.
유형Online ensemble (incremental boosting)Ensemble (sequential boosting of decision trees)Online ensemble (streaming bagging)
원전Oza, N. C., & Russell, S. (2001). Online Bagging and Boosting. In Artificial Intelligence and Statistics 2001 (pp. 105–112). Morgan Kaufmann. link ↗Friedman, J. H. (2001). Greedy Function Approximation: A Gradient Boosting Machine. Annals of Statistics, 29(5), 1189–1232. DOI ↗Oza, N. C., & Russell, S. (2001). Online bagging and boosting. In Proceedings of the Eighth International Workshop on Artificial Intelligence and Statistics (AISTATS 2001), pp. 105–112. link ↗
별칭streaming boosting, incremental boosting, online AdaBoost, online ensemble boostingGradient Boosting (GBM), GBM, gradient boosted trees, gradient boosting machineincremental bagging, streaming bagging, online bootstrap aggregating, OzaBag
관련654
요약Online Boosting adapts the classical boosting framework to data streams, updating an ensemble of weak learners one example at a time without storing the full dataset. The Oza-Russell formulation approximates AdaBoost's reweighting using Poisson-sampled instance counts, enabling accurate, adaptive classification in real-time or resource-constrained environments.Gradient 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.Online Bagging is a streaming ensemble method introduced by Oza and Russell in 2001 that adapts the classical bootstrap aggregating (Bagging) framework to the online learning setting. Instead of resampling a fixed dataset, each incoming instance is fed to every base learner a Poisson(1)-distributed number of times, faithfully approximating bootstrap sampling as the stream evolves. The result is a robust, incrementally updated ensemble that can handle concept drift and continuous data arrival without storing the entire dataset.
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ScholarGate방법 비교: Online Boosting · Gradient Boosting · Online Bagging. 2026-06-18에 다음에서 검색함: https://scholargate.app/ko/compare