2017
DOI: 10.48550/arxiv.1709.02800
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GOOWE: Geometrically Optimum and Online-Weighted Ensemble Classifier for Evolving Data Streams

Hamed R. Bonab,
Fazli Can

Abstract: Designing adaptive classifiers for an evolving data stream is a challenging task due to the data size and its dynamically changing nature. Combining individual classifiers in an online setting, the ensemble approach, is a well-known solution. It is possible that a subset of classifiers in the ensemble outperforms others in a time-varying fashion. However, optimum weight assignment for component classifiers is a problem which is not yet fully addressed in online evolving environments. We propose a novel data st… Show more

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