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dc.contributor.authorvan Rijn, Jan N.en_NZ
dc.contributor.authorHolmes, Geoffreyen_NZ
dc.contributor.authorPfahringer, Bernharden_NZ
dc.contributor.authorVanschoren, Joaquinen_NZ
dc.contributor.editorAggarwal, Charuen_NZ
dc.contributor.editorZhou, Zhi-Huaen_NZ
dc.contributor.editorTuzhilin, Alexanderen_NZ
dc.contributor.editorXiong, Huien_NZ
dc.contributor.editorWu, Xindongen_NZ
dc.coverage.spatialAtlantic City, New Jerseyen_NZ
dc.date.accessioned2017-02-20T22:18:39Z
dc.date.available2015-01-01en_NZ
dc.date.available2017-02-20T22:18:39Z
dc.date.issued2015-01-01en_NZ
dc.identifier.citationvan Rijn, J. N., Holmes, G., Pfahringer, B., & Vanschoren, J. (2015). Having a Blast: Meta-Learning and Heterogeneous Ensembles for Data Streams. In C. Aggarwal, Z.-H. Zhou, A. Tuzhilin, H. Xiong, & X. Wu (Eds.), Proceedings of the 15th IEEE International Conference on Data Mining (pp. 1003–1008). Washington, DC: IEEE. https://doi.org/10.1109/ICDM.2015.55en
dc.identifier.issn1550-4786en_NZ
dc.identifier.urihttps://hdl.handle.net/10289/10902
dc.description.abstractEnsembles of classifiers are among the best performing classifiers available in many data mining applications. However, most ensembles developed specifically for the dynamic data stream setting rely on only one type of base-level classifier, most often Hoeffding Trees. In this paper, we study the use of heterogeneous ensembles, comprised of fundamentally different model types. Heterogeneous ensembles have proven successful in the classical batch data setting, however they do not easily transfer to the data stream setting. We therefore introduce the Online Performance Estimation framework, which can be used in data stream ensembles to weight the votes of (heterogeneous) ensemble members differently across the stream. Experiments over a wide range of data streams show performance that is competitive with state of the art ensemble techniques, including Online Bagging and Leveraging Bagging. All experimental results from this work are easily reproducible and publicly available on OpenML for further analysis.
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.publisherIEEEen_NZ
dc.rightsThis is an author’s accepted version of an article published in the Proceedings of the 15th IEEE International Conference on Data Mining. ©2015 IEEE. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution to servers or lists, or to reuse any copyrighted component of this work in other works must be obtained from the IEEE.
dc.sourceIEEE International Conference on Data Mining (ICDM)en_NZ
dc.subjectScience & Technologyen_NZ
dc.subjectTechnologyen_NZ
dc.subjectComputer Science, Artificial Intelligenceen_NZ
dc.subjectComputer Science, Information Systemsen_NZ
dc.subjectComputer Scienceen_NZ
dc.subjectALGORITHM SELECTIONen_NZ
dc.subjectMachine learning
dc.titleHaving a Blast: Meta-Learning and Heterogeneous Ensembles for Data Streamsen_NZ
dc.typeConference Contribution
dc.identifier.doi10.1109/ICDM.2015.55en_NZ
dc.relation.isPartOfProceedings of the 15th IEEE International Conference on Data Miningen_NZ
pubs.begin-page1003
pubs.elements-id133575
pubs.end-page1008
pubs.finish-date2015-11-17en_NZ
pubs.place-of-publicationWashington, DC
pubs.publication-statusPublisheden_NZ
pubs.start-date2015-11-14en_NZ


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