Abstract

Data stream mining extracts information from large quantities of data flowing fast and continuously (data streams). They are usually affected by changes in the data distribution, giving rise to a phenomenon referred to as concept drift. Thus, learning models must detect and adapt to such changes, so as to exhibit a good predictive performance after a drift has occurred. In this regard, the development of effective drift detection algorithms becomes a key factor in data stream mining. In this work we propose $$\textit{CURIE}$$ , a drift detector relying on cellular automata. Specifically, in $$\textit{CURIE}$$ the distribution of the data stream is represented in the grid of a cellular automata, whose neighborhood rule can then be utilized to detect possible distribution changes over the stream. Computer simulations are presented and discussed to show that $$\textit{CURIE}$$ , when hybridized with other base learners, renders a competitive behavior in terms of detection metrics and classification accuracy. $$\textit{CURIE}$$ is compared with well-established drift detectors over synthetic datasets with varying drift characteristics.

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