A. Albatineh, M. Wilcox, B. Zogheib, M. Niewiadomska-Bugaj
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引用次数: 0
摘要
找出数据集中的聚类数量被认为是聚类分析的基本问题之一。本文通过MCSim软件包将最大聚类相似性(MCS)集成到R统计软件中,以寻找最优聚类数。两种聚类方法之间的相似性是在相同数量的聚类下计算的,使用Rand[聚类方法评估的客观标准。J Am Stat Assoc.1971;66:846–850.]和Jaccard[高山区植物群的分布。新植物学家。1912;11:37–50.]指数,对偶然一致性进行校正。指数以最高频率达到最大值的聚类数量是最优聚类数量的候选者。与其他标准不同,MCS可用于循环数据。在MCSim中实现了R中存在的七种聚类算法。使用校正的相似性指数生成聚类数量与聚类相似性的关系图。生成相似性指数的值和聚类树(树状图)。给出了几个例子,包括模拟、真实和循环数据集,以展示MCSim是如何在实践中成功工作的。
How many clusters exist? Answer via maximum clustering similarity implemented in R
Finding the number of clusters in a data set is considered as one of the fundamental problems in cluster analysis. This paper integrates maximum clustering similarity (MCS), for finding the optimal number of clusters, into R statistical software through the package MCSim. The similarity between the two clustering methods is calculated at the same number of clusters, using Rand [Objective criteria for the evaluation of clustering methods. J Am Stat Assoc. 1971;66:846–850.] and Jaccard [The distribution of the flora of the alpine zone. New Phytologist. 1912;11:37–50.] indices, corrected for chance agreement. The number of clusters at which the index attains its maximum with most frequency is a candidate for the optimal number of clusters. Unlike other criteria, MCS can be used with circular data. Seven clustering algorithms, existing in R, are implemented in MCSim. A graph of the number of clusters vs. clusters similarity using corrected similarity indices is produced. Values of the similarity indices and a clustering tree (dendrogram) are produced. Several examples including simulated, real, and circular data sets are presented to show how MCSim successfully works in practice.