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Fast Adapting Ensemble: A New Algorithm for Mining Data Streams with Concept Drift

机译:快速适应的集成体:一种使用概念漂移挖掘数据流的新算法

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摘要

The treatment of large data streams in the presence of concept drifts is one of the main challenges in the field of data mining, particularly when the algorithms have to deal with concepts that disappear and then reappear. This paper presents a new algorithm, called Fast Adapting Ensemble (FAE), which adapts very quickly to both abrupt and gradual concept drifts, and has been specifically designed to deal with recurring concepts. FAE processes the learning examples in blocks of the same size, but it does not have to wait for the batch to be complete in order to adapt its base classification mechanism. FAE incorporates a drift detector to improve the handling of abrupt concept drifts and stores a set of inactive classifiers that represent old concepts, which are activated very quickly when these concepts reappear. We compare our new algorithm with various well-known learning algorithms, taking into account, common benchmark datasets. The experiments show promising results from the proposed algorithm (regarding accuracy and runtime), handling different types of concept drifts.
机译:在存在概念漂移的情况下对大型数据流的处理是数据挖掘领域的主要挑战之一,尤其是在算法必须处理消失然后重新出现的概念时。本文提出了一种称为快速自适应集成(FAE)的新算法,该算法可以非常迅速地适应突然的和渐进的概念漂移,并且经过专门设计以处理重复出现的概念。 FAE以相同大小的块处理学习示例,但不必为了适应其基本分类机制而等待批处理完成。 FAE集成了一个漂移检测器,以改进对概念突变的处理,并存储代表旧概念的一组非活动分类器,这些分类器在这些概念再次出现时会很快被激活。考虑到通用基准数据集,我们将新算法与各种著名的学习算法进行了比较。实验表明,所提出的算法(在准确性和运行时间方面)处理不同类型的概念漂移具有令人鼓舞的结果。

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