概念漂移的集成学习方法

Jia-Wei Liao, Bi-Ru Dai
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引用次数: 10

摘要

近年来,概念漂移已成为数据挖掘中分析非平稳分布数据时的一个重要问题。例如,数据流具有数据随时间变化的特征,这类数据中可能存在概念漂移。简单地说,概念漂移可以分为突然概念漂移和渐进概念漂移。大多数研究只能解决一种类型的概念漂移。然而,在现实世界中,数据流可能有不止一种类型的概念漂移,而这种类型通常很难识别。针对这些原因,我们提出了一种新的加权方法,该方法可以比其他方法更快地适应当前的概念,并且可以提高对概念漂移数据流的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble Learning Approach for Concept Drift
Recently, concept drift has become an important issue while analyzing non-stationary distribution data in data mining. For example, data streams carry a characteristic that data vary by time, and there is probably concept drift in this type of data. Concept drifts can be categorized into sudden and gradual concept drifts in brief. Most of research only can solve one type of concept drift. However, in the real world, a data stream probably has more than one type of concept drift, and the type is usually difficult to be identified. In light of these reasons, we propose a new weighting method which can adapt more quickly to current concept than other methods and can improve the accuracy of classification on data streams with concept drifts.
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