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首页> 外文期刊>International Journal of Intelligent Systems and Applications >Empirical Study of Impact of Various Concept Drifts in Data Stream Mining Methods
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Empirical Study of Impact of Various Concept Drifts in Data Stream Mining Methods

机译:数据流挖掘方法中各种概念漂移影响的实证研究

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In the real world, most of the applications are inherently dynamic in nature i.e. their underlying data distribution changes with time. As a result, the concept drifts occur very frequently in the data stream. Concept drifts in data stream increase the challenges in learning as well, it also significantly decreases the accuracy of the classifier. However, recently many algorithms have been proposed that exclusively designed for data stream mining while considering drifting concept in the data stream.This paper presents an empirical evaluation of these algorithms on datasets having four possible types of concept drifts namely; sudden, gradual, incremental, and recurring drifts.
机译:在现实世界中,大多数应用程序本质上是本质上动态的,即其基础数据分布随时间而变化。结果,概念漂移在数据流中非常频繁地发生。数据流中的概念漂移也增加了学习方面的挑战,也大大降低了分类器的准确性。然而,最近提出了许多专门为数据流挖掘而设计的算法,同时考虑了数据流中的漂移概念。本文对具有四种可能类型的概念漂移的数据集进行了这些算法的实证评估。突然的,渐进的,增量的和反复出现的漂移。

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