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Statistical depth in abstract metric spaces

Abstract: The concept of depth has proved very important for multivariate and functional data analysis, as it essentially acts as a surrogate for the notion of ranking of observations which is absent in more than one dimension. Motivated by the rapid development of technology, in particular the advent of "Big Data", we extend here that concept to general metric spaces, propose a natural depth measure and explore its properties as a statistical depth function. Working in a general metric space allows the depth to be tailored to the data at hand and to the ultimate goal of the analysis, a very desirable property given the polymorphic nature of modern data sets. This flexibility is thoroughly illustrated by several real data analyses

Other publications of the same journal or congress with authors from the University of Cantabria

 Authorship: Geenens G., Nieto-Reyes A., Francisci G.,

 Fuente: Statistics and Computing, 2023, 33(2), 46

Publisher: Springer

 Publication date: 01/04/2023

No. of pages: 15

Publication type: Article

 DOI: 10.1007/s11222-023-10216-4

ISSN: 0960-3174,1573-1375

 Spanish project: MTM2017-86061-C2-2-P

Publication Url: https://doi.org/10.1007/s11222-023-10216-4

Authorship

GEENENS, GERY

FRANCISCI, GIACOMO