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RCD: A recurring concept drift framework

机译:RCD:循环概念漂移框架

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This paper presents recurring concept drifts (RCD), a framework that offers an alternative approach to handle data streams that suffer from recurring concept drifts (on-line learning). It creates a new classifier to each context found and stores a sample of data used to build it. When a new concept drift occurs, the algorithm compares the new context to previous ones using a non-parametric multivariate statistical test to verify if both contexts come from the same distribution. If so, the corresponding classifier is reused. The RCD framework is compared with several algorithms (among single and ensemble approaches), in both artificial and real data sets, chosen from frequently used algorithms and data sets in the concept drift research area. We claim the proposed framework had better average ranks in data sets with abrupt and gradual concept drifts compared to both the single classifiers and the ensemble approaches that use the same base learner.
机译:本文介绍了递归概念漂移(RCD),该框架提供了一种替代方法来处理遭受递归概念漂移的数据流(在线学习)。它为找到的每个上下文创建一个新的分类器,并存储用于构建分类器的数据样本。当发生新概念漂移时,该算法使用非参数多元统计检验将新上下文与以前的上下文进行比较,以验证两个上下文是否来自同一分布。如果是这样,则重用相应的分类器。将RCD框架与人工和真实数据集中的几种算法(在单一方法和整体方法中)进行了比较,这些算法是从概念漂移研究领域的常用算法和数据集中选择的。我们认为,与使用相同基础学习器的单个分类器和整体方法相比,所提出的框架在具有突然和渐进概念漂移的数据集中具有更好的平均排名。

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