序列数据集的增量维数估计算法

S. Adaekalavan
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引用次数: 0

摘要

最近,商业和科学数据的数量有了巨大的增长,比如蛋白质序列、零售交易和网络日志。在本文中,学者提出了一种基于每个数据对象与聚类中心之间的距离函数的鲁棒分层聚类方法。这种方法避免了计算每个数据对象到集群中心的距离。节省运行时间。实验结果表明,使用EIDA方法获得的聚类效果最好,表明该相似性度量方法适用于序列数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating incremental dimensional algorithm with sequence data set
Recently, there has been enormous growth in the amount of commercial and scientific data, such as protein sequences, retail transactions, and web-logs. In this paper, the scholar proposes a new approach for robust hierarchical clustering based on the distance function between each data object and the cluster centers. This method avoids the need to compute the distance of each data object to the cluster center. It saves running time. The experimental results showed that the best clusters were obtained using EIDA method, this suggests that this similarity measure would be applicable to sequence data sets.
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