2012
DOI: 10.1007/978-3-642-32645-5_67
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Efficiently Maintaining the Performance of an Ensemble Classifier in Streaming Data

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Cited by 8 publications
(17 citation statements)
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“…This module uses unsupervised approach to detect changes in the data stream [17]. Once detected, it signals the Semi- …”
Section: Overviewsupporting
confidence: 45%
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“…This module uses unsupervised approach to detect changes in the data stream [17]. Once detected, it signals the Semi- …”
Section: Overviewsupporting
confidence: 45%
“…In this study SRADL employs a density based concept drift detection approach similar to Ryu et.al [17]. Density based detection assumes that samples of the same class form clusters.…”
Section: Concept Drift Detectionsupporting
confidence: 38%
“…One of the most widely used techniques for dealing with streaming data is the use of an Ensemble of Classifiers for modeling the stream [21][22][23][24][25][26][27][28][29][30][31][32][33][34]. The basic principle of ensemble classifiers is that of combining several weak and independent classifiers to produce a strong model on the entire data.…”
Section: C) Ensemble Classifierssupporting
confidence: 41%
“…In [32], Woo et al developed an ensemble approach to classifying streaming data based on misclassified sample points. In this paper and in the following work in [33] and [34], they have demonstrated the effectiveness of their algorithm which is based on clustering and subsequent classification of streaming data.…”
Section: Classification Upon Clustering For Streaming Datamentioning
confidence: 44%
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