Clustering Algorithm on Data Stream with Skew Distribution Based on Temporal Density
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    Abstract:

    To solve the problem of clustering this paper proposes a concept of temporal density, which reveals a set of mathematical properties, especially the incremental computation. A clustering algorithm named TDCA (temporal density based clustering algorithm) with time complexity of O(c×m×lgm) is created with a tree structure implemented for both storage and retrieve efficiency. TDCA is capable of capturing the temporal features of a data stream with skew data distribution either in real time or on demand. The experimental results show that TDCA is functionable and scalable.

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杨 宁,唐常杰,王 悦,陈 瑜,郑皎凌.一种基于时态密度的倾斜分布数据流聚类算法.软件学报,2010,21(5):1031-1041

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  • Received:February 25,2008
  • Revised:October 07,2008
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