Clustering analysis of multivariate data: a weighted spatial ranks-based approach (Q6091228)

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scientific article; zbMATH DE number 7770362
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Clustering analysis of multivariate data: a weighted spatial ranks-based approach
scientific article; zbMATH DE number 7770362

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    Clustering analysis of multivariate data: a weighted spatial ranks-based approach (English)
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    24 November 2023
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    Summary: Determining the right number of clusters without any prior information about their numbers is a core problem in cluster analysis. In this paper, we propose a nonparametric clustering method based on different weighted spatial rank (WSR) functions. The main idea behind WSR is to define a dissimilarity measure locally based on a localized version of multivariate ranks. We consider a nonparametric Gaussian kernel weights function. We compare the performance of the method with other standard techniques and assess its misclassification rate. The method is completely data-driven, robust against distributional assumptions, and accurate for the purpose of intuitive visualization and can be used both to determine the number of clusters and assign each observation to its cluster.
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