Scalable clustering with adaptive instance sampling

Jaekyung Yang, ByoungJin Yu, Myoungjin Choi
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引用次数: 0

Abstract

Most of the clustering algorithms are affected by the number of attributes and instances with respect to the computation time. Thus, the data mining community has made efforts to enable induction of the clustering efficient. Hence, scalability is naturally a critical issue that the data mining community faces. A method to handle this issue is to use a subset of all instances. This paper suggests an algorithm that enables to perform clustering efficiently. This is done by using nested partitions method for solving the noisy performance problems, which arises when using a subset of instances and adjusting the sample rate properly at each iteration. This Adaptive NPCLUSTER algorithm had better similarity in small dataset and had worse similarity in large dataset than NPCLUSTER, but it had shorter computation time than NPCLUSTER.
具有自适应实例采样的可伸缩集群
大多数聚类算法在计算时间方面受到属性和实例数量的影响。因此,数据挖掘界一直在努力提高聚类的归纳效率。因此,可伸缩性自然是数据挖掘社区面临的一个关键问题。处理此问题的一种方法是使用所有实例的子集。本文提出了一种能够有效地进行聚类的算法。这是通过使用嵌套分区方法来解决噪声性能问题来实现的,当使用实例子集并在每次迭代中适当调整采样率时,会出现噪声性能问题。该算法在小数据集上的相似度优于NPCLUSTER,在大数据集上的相似度低于NPCLUSTER,但计算时间比NPCLUSTER短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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