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Knowledge-based evolving clustering algorithm for data stream

机译:基于知识的数据流演化聚类算法

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In this paper, we present a knowledge-based evolving algorithm for data stream clustering. The basic idea of the new algorithm is to divide data stream into frames, and to incorporate knowledge learned in previous frames into clustering of the following ones. Experimental studies have demonstrated that the evolving learning mechanism leads to improved clustering results compared with conventional incremental clustering algorithm Fuzzy ART and batch-based clustering algorithm k-means.
机译:在本文中,我们提出了一种基于知识的数据流聚类演化算法。新算法的基本思想是将数据流划分为多个帧,并将在先前的帧中学习到的知识合并到随后的帧的聚类中。实验研究表明,与传统的增量聚类算法Fuzzy ART和基于批处理的聚类算法k-means相比,不断发展的学习机制可改善聚类结果。

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