基于精度和多样性加权的演化数据流集成

Yange Sun, Han Shao, Bencai Zhang
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引用次数: 0

摘要

集成分类是一种被积极研究的范式,由于越来越多的实际应用而受到广泛关注。集成学习的关键问题是构建一个具有准确性和多样性的基本分类器池。在本文中,与传统的面向数据流的集成方法不同,我们提出了一种新的基于准确性和多样性(MAD)的方法来监督集成学习。在此基础上,提出了一种新的在线集成方法——准确性和多样性加权集成(ADE),可以有效地处理数据流中的概念漂移。ADE主要通过以下三个步骤构建面向概念漂移的集成:对于当前数据窗口,1)漂移检测时基于当前概念构建新的基分类器,2)使用MAD度量集成成员的性能,3)新构建的分类器替换最差的基分类器。如果新构造的分类器是最差的分类器,则没有发生替换。与目前最先进的算法相比,ADE的平均分类准确率比目前最佳相关算法高出2.38%。实验结果表明,该方法能有效适应不同类型的漂移。
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Ensemble based on accuracy and diversity weighting for evolving data streams
Ensemble classification is an actively researched paradigm that has received much attention due to increasing real-world applications. The crucial issue of ensemble learning is to construct a pool of base classifiers with accuracy and diversity. In this paper, unlike conventional data-streams oriented ensemble methods, we propose a novel Measure via both Accuracy and Diversity (MAD) instead of one of them to supervise ensemble learning. Based on MAD, a novel online ensemble method called Accuracy and Diversity weighted Ensemble (ADE) effectively handles concept drift in data streams. ADE mainly uses the following three steps to construct a concept-drift oriented ensemble: for the current data window, 1) a new base classifier is constructed based on the current concept when drift detect, 2) MAD is used to measure the performance of ensemble members, and 3) a newly built classifier replaces the worst base classifier. If the newly constructed classifier is the worst one, the replacement has not occurred. Comparing with the state-of-art algorithms, ADE exceeds the current best-related algorithm by 2.38% in average classification accuracy. Experimental results show that the proposed method can effectively adapt to different types of drifts.
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