WINP:用于大型数据库的基于窗口的增量并行聚类算法

Zhang Qiang, Zhao Zheng, S. Wei, E. Daley
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引用次数: 2

摘要

我们为非常大的数据库引入了一种新的聚类算法,称为WINP。在WINP中采用了两种不同尺寸的处理对象,以获得较高的精度和效率。WINP创建一个窗口,在精确的聚类处理之前检测聚类的大致位置。在这些位置上聚类可以减少大量的计算并获得良好的性能。WINP是第一个同时实现增量聚类和分布式并行聚类的算法。我们的新方法的优点是:(1)效率很高;(2)实现分布式并行处理,可在多个通过局域网连接的工作站上运行;(3)引入了一种新的增量聚类方法,对已经处理过的数据库中的新数据进行聚类;(4)能有效地发现任意形状的簇;(5)对噪声不敏感;(6)对高维点有一定的处理能力
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WINP: a window-based incremental and parallel clustering algorithm for very large databases
We introduce a new clustering algorithm called WINP for very large databases. Two different sizes of handling objects were used in WINP to acquire high accuracy and efficiency. WINP creates a window to detect approximate locations of clusters before accurate clustering processing. Clustering on these locations will reduce a lot of computations and get a good performance. WINP is the first algorithm to realize both incremental clustering and distributed parallel clustering. The advantages of our new approach are: (1) it is very efficient; (2) it realizes distributed parallel processing and can be run on a number of workstations connected via local area network; (3) it introduces a novel incremental clustering method for new coming data in an already processed database; (4) it is effective in discovering clusters of arbitrary shape; (5) it is not sensitive to noise; and (6) it has some ability to deal with high dimensional points
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