Litcius/Paper detail

Hierarchical Means Clustering

Maurizio Vichi, Carlo Cavicchia, Patrick J. F. Groenen

2022Journal of Classification45 citationsDOIOpen Access PDF

Abstract

Abstract In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for clustering multivariate objects based on model estimation. Distinct to these methods is the use of a system of n nested statistical models and the optimization of a loss function to best-fit a clustering model to observed data. Many hierarchical clustering methods are not model-based where hierarchy is obtained using a divisive or agglomerative greedy procedure. This paper aims to fill this gap by proposing a novel hierarchical cluster analysis methodology called Hierarchical Means Clustering. HMC produces a set of nested partitions with a centroid-based model estimated via least-squares by minimizing the total within-cluster deviance of the n partitions in the hierarchy. Hierarchical Means Clustering produces a hierarchy formed by n -1 nested partitions from 2 to n clusters with minimal total cluster deviance. Six real data examples are featured, and key links to k -means, Ward’s method, Bisecting k -means and model-based hierarchical agglomerative clustering methods are discussed.

Topics & Concepts

Hierarchical clusteringCluster analysisSingle-linkage clusteringHierarchyComputer scienceMathematicsData miningHierarchical database modelHierarchical clustering of networksDeviance (statistics)Correlation clusteringPattern recognition (psychology)Artificial intelligenceCanopy clustering algorithmStatisticsEconomicsMarket economyBayesian Methods and Mixture ModelsSensory Analysis and Statistical MethodsAdvanced Clustering Algorithms Research