2021
DOI: 10.3390/a14020058
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Adaptive Quick Reduct for Feature Drift Detection

Abstract: Data streams are ubiquitous and related to the proliferation of low-cost mobile devices, sensors, wireless networks and the Internet of Things. While it is well known that complex phenomena are not stationary and exhibit a concept drift when observed for a sufficiently long time, relatively few studies have addressed the related problem of feature drift. In this paper, a variation of the QuickReduct algorithm suitable to process data streams is proposed and tested: it builds an evolving reduct that dynamically… Show more

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Cited by 5 publications
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References 26 publications
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