Insights in Hierarchical Clustering of Variables for Compositional Data

IF 2.8 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY
Josep Antoni Martín-Fernández, Valentino Di Donato, Vera Pawlowsky-Glahn, Juan José Egozcue
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引用次数: 0

Abstract

R-mode hierarchical clustering is a method for forming hierarchical groups of mutually exclusive subsets of variables. This R-mode cluster method identifies interrelationships between variables which are useful for variable selection and dimension reduction. Importantly, the method is based on metric elements defined on the sample space of variables. Consequently, hierarchical clustering of compositional parts should respect the particular geometry of the simplex. In this work, the connections between concepts such as distance, cluster representative, compositional biplot, and log-ratio basis are explored within the framework of the most popular R-mode agglomerative hierarchical clustering methods. The approach is illustrated in a paleoecological study to identify groups of species sharing similar behavior.

Abstract Image

成分数据变量的层次聚类研究
r型分层聚类是一种由互斥的变量子集组成分层群的方法。这种r型聚类方法确定了变量之间的相互关系,这对变量选择和降维很有用。重要的是,该方法基于在变量样本空间上定义的度量元素。因此,组成部分的分层聚类应该尊重单纯形的特定几何形状。在这项工作中,在最流行的R-mode聚集分层聚类方法的框架内探索了距离、聚类代表性、组合双图和对数比基等概念之间的联系。这种方法在一项古生态学研究中得到了说明,该研究用于识别具有相似行为的物种群。
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来源期刊
Mathematical Geosciences
Mathematical Geosciences 地学-地球科学综合
CiteScore
5.30
自引率
15.40%
发文量
50
审稿时长
>12 weeks
期刊介绍: Mathematical Geosciences (formerly Mathematical Geology) publishes original, high-quality, interdisciplinary papers in geomathematics focusing on quantitative methods and studies of the Earth, its natural resources and the environment. This international publication is the official journal of the IAMG. Mathematical Geosciences is an essential reference for researchers and practitioners of geomathematics who develop and apply quantitative models to earth science and geo-engineering problems.
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