Volume 62, Issue 2
Original Article

A folded model for compositional data analysis

Michail Tsagris

Corresponding Author

E-mail address: mtsagris@uoc.gr

Department of Economics, University of Crete, Rethymnon, Greece

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Connie Stewart

Department of Mathematics and Statistics, University of New Brunswick, Saint John, New Brunswick, Canada

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First published: 23 July 2020

Summary

A folded type model is developed for analysing compositional data. The proposed model involves an extension of the α‐transformation for compositional data and provides a new and flexible class of distributions for modelling data defined on the simplex sample space. Despite its rather seemingly complex structure, employment of the EM algorithm guarantees efficient parameter estimation. The model is validated through simulation studies and examples which illustrate that the proposed model performs better in terms of capturing the data structure, when compared to the popular logistic normal distribution, and can be advantageous over a similar model without folding.

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