2024
DOI: 10.3390/app14167157
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Variance Feedback Drift Detection Method for Evolving Data Streams Mining

Meng Han,
Fanxing Meng,
Chunpeng Li

Abstract: Learning from changing data streams is one of the important tasks of data mining. The phenomenon of the underlying distribution of data streams changing over time is called concept drift. In classification decision-making, the occurrence of concept drift will greatly affect the classification efficiency of the original classifier, that is, the old decision-making model is not suitable for the new data environment. Therefore, dealing with concept drift from changing data streams is crucial to guarantee classifi… Show more

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