Semi-Supervised Classification of Data Streams by BIRCH Ensemble and Local Structure Mapping

被引:0
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作者
Yi-Min Wen
Shuai Liu
机构
[1] Guilin University of Electronic Technology,Guangxi Key Laboratory of Image and Graphic Intelligent Processing
[2] Guilin University of Electronic Technology,Guangxi Key Laboratory of Trusted Software
[3] Guilin University of Electronic Technology,School of Computer Science and Information Security
关键词
semi-supervised classification; clustering; data stream; concept drift;
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中图分类号
学科分类号
摘要
Many researchers have applied clustering to handle semi-supervised classification of data streams with concept drifts. However, the generalization ability for each specific concept cannot be steadily improved, and the concept drift detection method without considering the local structural information of data cannot accurately detect concept drifts. This paper proposes to solve these problems by BIRCH (Balanced Iterative Reducing and Clustering Using Hierarchies) ensemble and local structure mapping. The local structure mapping strategy is utilized to compute local similarity around each sample and combined with semi-supervised Bayesian method to perform concept detection. If a recurrent concept is detected, a historical BIRCH ensemble classifier is selected to be incrementally updated; otherwise a new BIRCH ensemble classifier is constructed and added into the classifier pool. The extensive experiments on several synthetic and real datasets demonstrate the advantage of the proposed algorithm.
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页码:295 / 304
页数:9
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