Literature DB >> 33730771

Multiple scaled symmetric distributions in allometric studies.

Antonio Punzo1, Luca Bagnato2.   

Abstract

In allometric studies, the joint distribution of the log-transformed morphometric variables is typically symmetric and with heavy tails. Moreover, in the bivariate case, it is customary to explain the morphometric variation of these variables by fitting a convenient line, as for example the first principal component (PC). To account for all these peculiarities, we propose the use of multiple scaled symmetric (MSS) distributions. These distributions have the advantage to be directly defined in the PC space, the kind of symmetry involved is less restrictive than the commonly considered elliptical symmetry, the behavior of the tails can vary across PCs, and their first PC is less sensitive to outliers. In the family of MSS distributions, we also propose the multiple scaled shifted exponential normal distribution, equivalent of the multivariate shifted exponential normal distribution in the MSS framework. For the sake of parsimony, we also allow the parameter governing the leptokurtosis on each PC, in the considered MSS distributions, to be tied across PCs. From an inferential point of view, we describe an EM algorithm to estimate the parameters by maximum likelihood, we illustrate how to compute standard errors of the obtained estimates, and we give statistical tests and confidence intervals for the parameters. We use artificial and real allometric data to appreciate the advantages of the MSS distributions over well-known elliptically symmetric distributions and to compare the robustness of the line from our models with respect to the lines fitted by well-established robust and non-robust methods available in the literature.
© 2021 Antonio Punzo and Luca Bagnato, published by De Gruyter, Berlin/Boston.

Entities:  

Keywords:  EM algorithm; allometry; heavy-tailed distributions; line-fitting methods; multiple scaled distributions; scale mixtures

Mesh:

Year:  2021        PMID: 33730771     DOI: 10.1515/ijb-2020-0059

Source DB:  PubMed          Journal:  Int J Biostat        ISSN: 1557-4679            Impact factor:   1.829


  1 in total

1.  Parsimonious hidden Markov models for matrix-variate longitudinal data.

Authors:  Salvatore D Tomarchio; Antonio Punzo; Antonello Maruotti
Journal:  Stat Comput       Date:  2022-06-15       Impact factor: 2.324

  1 in total

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