Klinkenberg, RalfScholz, Martin2006-03-162006-03-162006-03-16http://hdl.handle.net/2003/2223610.17877/DE290R-14320This paper proposes a boosting-like method to train a classifier ensemble from data streams. It naturally adapts to concept drift and allows to quantify the drift in terms of its base learners. The algorithm is empirically shown to outperform learning algorithms that ignore concept drift. It performs no worse than advanced adaptive time window and example selection strategies that store all the data and are thus not suited for mining massive streams.enBase learnersBoosting-like methodClassifier ensembleData streamDriftMining massive streams004Boosting classifiers for drifting conceptsreport