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Modeling Compositional Regression With Uncorrelated and Correlated Errors: A Bayesian Approach
Volume 16, Issue 2 (2018), pp. 221–250
Taciana K. O. Shimizu   Francisco Louzada   Adriano K. Suzuki     All authors (4)

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https://doi.org/10.6339/JDS.201804_16(2).0002
Pub. online: 4 August 2022      Type: Research Article      Open accessOpen Access

Published
4 August 2022

Abstract

Compositional data consist of known compositions vectors whose components are positive and defined in the interval (0,1) representing proportions or fractions of a “whole”. The sum of these components must be equal to one. Compositional data is present in different knowledge areas, as in geology, economy, medicine among many others. In this paper, we propose a new statistical tool for volleyball data, i.e., we introduce a Bayesian anal- ysis for compositional regression applying additive log-ratio (ALR) trans- formation and assuming uncorrelated and correlated errors. The Bayesian inference procedure based on Markov Chain Monte Carlo Methods (MCMC). The methodology is applied on an artificial and a real data set of volleyball.

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Keywords
Compositional data additive log-ratio transformation correlated errors MCMC

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  • Online ISSN: 1683-8602
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