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A Framework of Cluster Decision Tree in Data Stream Classification

机译:数据流分类中的集群决策树框架

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Recently, data streams classification with concept drifting has drawn increasing attention of scholars in data mining, due to the deficiencies of existing algorithms in accuracy and efficient. In this paper, we propose a framework for handling the problem mentioned above using cluster decision tree. We cluster those data which cannot be classified temporarily into n class, and generate new branches of the VFDT based on cluster result or replace original ones. Our empirical study shows that the proposed method has substantial advantages over traditional classifiers in prediction accuracy and efficiency.
机译:最近,由于现有算法在准确性和效率上的不足,带有概念漂移的数据流分类在数据挖掘中引起了越来越多学者的关注。在本文中,我们提出了一个使用聚类决策树处理上述问题的框架。我们将无法暂时分类为n类的数据聚类,并根据聚类结果生成VFDT的新分支或替换原始分支。我们的经验研究表明,与传统分类器相比,该方法在预测准确性和效率上具有实质性优势。

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