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Autores principales: Greenacre, Michael, Graeve, Martin
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2511.14622
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author Greenacre, Michael
Graeve, Martin
author_facet Greenacre, Michael
Graeve, Martin
contents In certain fields where compositional data are studied, the compositional components, called parts, can be combined into certain subsets, called amalgamations, that are based on domain knowledge. Furthermore, these subsets can form a natural hierarchy of amalgamations subdividing into sub-amalgamations. The authors, a statistician and a biochemist, demonstrate how to create a hierarchy of amalgamations in the context of fatty acid compositions in a sample of marine organisms. Following a tradition in compositional data analysis, these amalgamations are transformed to logratios, and their usefulness as new variables is quantified by the percentage of total logratio variance that they explain. This method is proposed as an alternative method of variable selection in compositional data analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14622
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Amalgamations in a hierarchy as a way of variable selection in compositional data analysis
Greenacre, Michael
Graeve, Martin
Methodology
62H99
In certain fields where compositional data are studied, the compositional components, called parts, can be combined into certain subsets, called amalgamations, that are based on domain knowledge. Furthermore, these subsets can form a natural hierarchy of amalgamations subdividing into sub-amalgamations. The authors, a statistician and a biochemist, demonstrate how to create a hierarchy of amalgamations in the context of fatty acid compositions in a sample of marine organisms. Following a tradition in compositional data analysis, these amalgamations are transformed to logratios, and their usefulness as new variables is quantified by the percentage of total logratio variance that they explain. This method is proposed as an alternative method of variable selection in compositional data analysis.
title Amalgamations in a hierarchy as a way of variable selection in compositional data analysis
topic Methodology
62H99
url https://arxiv.org/abs/2511.14622