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Assigning Objects to Classes of a Euclidean Ascending Hierarchical Clustering

机译:将对象分配给欧氏升序层次聚类的类

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In a Euclidean ascending hierarchical clustering (AHC, Ward's method), the usual method for allocating a supplementary object to a cluster is based on the geometric distance from the object-point to the barycenter of the cluster. The main drawback of this method is that it does not take into consideration that clusters differ as regards weights, shapes and dispersions. Neither does it take into account successive dichotomies of the hierarchy of classes. This is why we propose a new ranking rule adapted to geometric data analysis that takes the shape of clusters into account. From a set of supplementary objects, we propose a strategy for assigning these objects to clusters stemming from an AHC. The idea is to assign supplementary objects at the local level of a node to one of its two successors until a cluster of the partition under study is reached. We define a criterion based on the ratio of Mahalanobis distances from the object-point to barycenters of the two clusters that make up the node. We first introduce the principle of the method, and we apply it to a barometric survey carried out by the CEVIPOF on various components of trust among French citizens. We compare the evolution of clusters of individuals between 2009 and 2012 then 2013.
机译:在欧几里得升序层次聚类中(AHC,沃德方法),将补充对象分配给聚类的通常方法是基于从聚类的对象点到重心的几何距离。该方法的主要缺点是,它没有考虑聚类在权重,形状和分散性方面的差异。它也没有考虑到类层次结构的连续二分法。这就是为什么我们提出了一种适用于几何数据分析的新排序规则,其中考虑了聚类的形状。从一组补充对象中,我们提出了一种策略,用于将这些对象分配给源自AHC的群集。这个想法是在节点的本地级别上将补充对象分配给它的两个后继对象之一,直到达到正在研究的分区的簇为止。我们基于从组成节点的两个群集的对象点到重心的马氏距离之比定义一个标准。我们首先介绍该方法的原理,并将其应用于CEVIPOF对法国公民之间信任的各个组成部分进行的气压调查。我们比较了2009年至2012年以及2013年之间的个人集群演变。

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