New ensemble methods for evolving data streams
Tipus de documentText en actes de congrés
EditorAssociation for Computing Machinery (ACM)
Condicions d'accésAccés restringit per política de l'editorial
Advanced analysis of data streams is quickly becoming a key area of data mining research as the number of applications demanding such processing increases. Online mining when such data streams evolve over time, that is when concepts drift or change completely, is becoming one of the core issues. When tackling non-stationary concepts, ensembles of classifiers have several advantages over single classifier methods: they are easy to scale and parallelize, they can adapt to change quickly by pruning under-performing parts of the ensemble, and they therefore usually also generate more accurate concept descriptions. This paper proposes a new experimental data stream framework for studying concept drift, and two new variants of Bagging: ADWIN Bagging and Adaptive-Size Hoeffding Tree (ASHT) Bagging. Using the new experimental framework, an evaluation study on synthetic and real-world datasets comprising up to ten million examples shows that the new ensemble methods perform very well compared to several known methods.
CitacióBifet, A.C., Holmes, G., Pfahringer, B., Kirkby, R., Gavaldà, R. New ensemble methods for evolving data streams. A: ACM SIGKDD Conference on Knowledge Discovery and Data Mining. "KDD'09: proceedings of the 15th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining: June 28-July 1, 2009: Paris, France". New York: Association for Computing Machinery (ACM), 2009, p. 139-148.
Versió de l'editorhttps://dl.acm.org/citation.cfm?doid=1557019.1557041