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Accuracy Updated Ensemble for Data Streams with Concept Drift

机译:具有概念漂移的数据流精度更新的集成

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In this paper we study the problem of constructing accurate block-based ensemble classifiers from time evolving data streams. AWE is the best-known representative of these ensembles. We propose a new algorithm called Accuracy Updated Ensemble (AUE), which extends AWE by using online component classifiers and updating them according to the current distribution. Additional modifications of weighting functions solve problems with undesired classifier excluding seen in AWE. Experiments with several evolving data sets show that, while still requiring constant processing time and memory, AUE is more accurate than AWE.
机译:在本文中,我们研究了从随时间变化的数据流构造准确的基于块的集合分类器的问题。 AWE是这些合奏的最著名代表。我们提出了一种称为“精度更新的合奏”(AUE)的新算法,该算法通过使用在线组件分类器并根据当前分布对其进行更新来扩展AWE。加权函数的其他修改解决了不良分类器所带来的问题,但在AWE中看不到。对几个不断发展的数据集进行的实验表明,尽管仍然需要恒定的处理时间和内存,但AUE比AWE更为准确。

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