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Streaming random patches for evolving data stream classification

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Résumé

Ensemble methods are a popular choice for learning from evolving data streams. This popularity is due to (i) the ability to simulate simple, yet, successful ensemble learning strategies, such as bagging and random forests; (ii) the possibility of incorporating drift detection and recovery in conjunction to the ensemble algorithm; (iii) the availability of efficient incremental base learners, such as Hoeffding Trees. In this work, we introduce the Streaming Random Patches (SRP) algorithm, an ensemble method specially adapted to stream classification which combines random subspaces and online bagging. We provide theoretical insights and empirical results illustrating different aspects of SRP. In particular, we explain how the widely adopted incremental Hoeffding trees are not, in fact, unstable learners, unlike their batch counterparts, and how this fact significantly influences ensemble methods design and performance. We compare SRP against state-of-the-art ensemble variants for streaming data in a multitude of datasets. The results show how SRP produce a high predictive performance for both real and synthetic datasets. Besides, we analyze the diversity over time and the average tree depth, which provides insights on the differences between local subspace randomization (as in random forest) and global subspace randomization (as in random subspaces).

langue originaleAnglais
titreProceedings - 19th IEEE International Conference on Data Mining, ICDM 2019
rédacteurs en chefJianyong Wang, Kyuseok Shim, Xindong Wu
EditeurInstitute of Electrical and Electronics Engineers Inc.
Pages240-249
Nombre de pages10
ISBN (Electronique)9781728146034
Les DOIs
étatPublié - 1 nov. 2019
Evénement19th IEEE International Conference on Data Mining, ICDM 2019 - Beijing, Chine
Durée: 8 nov. 201911 nov. 2019

Série de publications

NomProceedings - IEEE International Conference on Data Mining, ICDM
Volume2019-November
ISSN (imprimé)1550-4786

Une conférence

Une conférence19th IEEE International Conference on Data Mining, ICDM 2019
Pays/TerritoireChine
La villeBeijing
période8/11/1911/11/19

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