2013
DOI: 10.1007/s10618-013-0340-z
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Very fast decision rules for classification in data streams

Abstract: Data stream mining is the process of extracting knowledge structures from continuous, rapid data records. Many decision tasks can be formulated as stream mining problems and therefore many new algorithms for data streams are being proposed. Decision rules are one of the most interpretable and flexible models for predictive data mining. Nevertheless, few algorithms have been proposed in the literature to learn rule models for time-changing and high-speed flows of data. In this paper we present the very fast dec… Show more

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Cited by 46 publications
(20 citation statements)
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“…3 For the real-world datasets we chose four data streams which are commonly used as benchmarks [8,25,34,43]. More precisely, we chose Airlines (Air) and Electricity (Elec) as examples of fairly balanced datasets, and KDDCup and PAKDD as examples of moderately imbalanced datasets.…”
Section: Datasetsmentioning
confidence: 99%
“…3 For the real-world datasets we chose four data streams which are commonly used as benchmarks [8,25,34,43]. More precisely, we chose Airlines (Air) and Electricity (Elec) as examples of fairly balanced datasets, and KDDCup and PAKDD as examples of moderately imbalanced datasets.…”
Section: Datasetsmentioning
confidence: 99%
“…An initial approach is to remove similar trees as correlated trees hardly contribute to reaching the correct decision. Thus, for effective RF decisions, we strive to remove uncorrelated trees [14]. The correlation between two trees may be defined in various ways, such as:…”
Section: Improving Rf Performance and Consumption Of Resourcesmentioning
confidence: 99%
“…Rule-based algorithms were also adjusted to data stream environments, in fact, FLORA algorithms developed by Kubat and Widmer were one of the first classifiers S to cope with concept drift (Deckert 2013). Other algorithms use a structure similar to a decision tree to create rules and rule-specific drift detectors to react to changes (Kosina and Gama 2015).…”
Section: Single Classifiersmentioning
confidence: 99%