A Novel Approach to Detect Concept Drift Using Machine Learning

Syed Sajjad Hussain, M. Hashmani, Vali Uddin, T. Ansari, Muslim Jameel
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引用次数: 5

Abstract

Data concept drift is reported as one of the critical performance degradation phenomena in Machine Learning, especially for volumetric data. Besides, the concept drift annotation is also one of the major research problems in the said domain. In this paper, a novel approach for data concept drift detection is presented. Moreover, the performance after removing the instances with concept drift is also compared with the original dataset on various machine learning algorithms. Specifically, the concept using Euclidean distance in clusters and the mutual information of an instance refer to the degree of concept drift of the instance. The said approach has been employed on the SEA dataset
一种利用机器学习检测概念漂移的新方法
数据概念漂移是机器学习中重要的性能退化现象之一,特别是对于体积数据。此外,概念漂移标注也是该领域的主要研究问题之一。本文提出了一种新的数据概念漂移检测方法。此外,在各种机器学习算法上,还比较了去除概念漂移实例后与原始数据集的性能。具体来说,在聚类中使用欧几里得距离的概念和实例的互信息是指实例的概念漂移程度。上述方法已用于SEA数据集
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