dc.contributorUniversidade Estadual Paulista (Unesp)
dc.date.accessioned2014-05-20T15:31:19Z
dc.date.accessioned2022-10-05T17:03:58Z
dc.date.available2014-05-20T15:31:19Z
dc.date.available2022-10-05T17:03:58Z
dc.date.created2014-05-20T15:31:19Z
dc.date.issued2012-01-01
dc.identifier2012 International Joint Conference on Neural Networks (ijcnn). New York: IEEE, p. 6, 2012.
dc.identifier1098-7576
dc.identifierhttp://hdl.handle.net/11449/40484
dc.identifier10.1109/IJCNN.2012.6252617
dc.identifierWOS:000309341301117
dc.identifier2-s2.0-84865065341
dc.identifier5693860025538327
dc.identifier0000-0002-1123-9784
dc.identifier.urihttp://repositorioslatinoamericanos.uchile.cl/handle/2250/3911462
dc.description.abstractConcept drift is a problem of increasing importance in machine learning and data mining. Data sets under analysis are no longer only static databases, but also data streams in which concepts and data distributions may not be stable over time. However, most learning algorithms produced so far are based on the assumption that data comes from a fixed distribution, so they are not suitable to handle concept drifts. Moreover, some concept drifts applications requires fast response, which means an algorithm must always be (re) trained with the latest available data. But the process of labeling data is usually expensive and/or time consuming when compared to unlabeled data acquisition, thus only a small fraction of the incoming data may be effectively labeled. Semi-supervised learning methods may help in this scenario, as they use both labeled and unlabeled data in the training process. However, most of them are also based on the assumption that the data is static. Therefore, semi-supervised learning with concept drifts is still an open challenge in machine learning. Recently, a particle competition and cooperation approach was used to realize graph-based semi-supervised learning from static data. In this paper, we extend that approach to handle data streams and concept drift. The result is a passive algorithm using a single classifier, which naturally adapts to concept changes, without any explicit drift detection mechanism. Its built-in mechanisms provide a natural way of learning from new data, gradually forgetting older knowledge as older labeled data items became less influent on the classification of newer data items. Some computer simulation are presented, showing the effectiveness of the proposed method.
dc.languageeng
dc.publisherIEEE
dc.relation2012 International Joint Conference on Neural Networks (ijcnn)
dc.rightsAcesso aberto
dc.sourceWeb of Science
dc.subjectConcept Drift
dc.subjectSemi-Supervised Learning
dc.subjectParticle Competition and Cooperation
dc.subjectMachine learning
dc.titleParticle Competition and Cooperation in Networks for Semi-Supervised Learning with Concept Drift
dc.typeTrabalho apresentado em evento


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