Testing normality of latent variables in the polychoric correlation

This paper explores the feasibility of simultaneously facing three sources of complexity in Bayesian testing, namely (i) testing a parametric against a non-parametric alternative (ii) adjusting for partial observability (iii) developing a test under a Bayesian encompassing principle. Testing the nor...

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Main Authors: Carlos Almeida, Michel Mouchart
Format: Article
Language:English
Published: University of Bologna 2014-12-01
Series:Statistica
Subjects:
Online Access:http://rivista-statistica.unibo.it/article/view/4594
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spelling doaj-84d83aca26274edc987b59f4215234d72020-11-24T20:55:11ZengUniversity of BolognaStatistica0390-590X1973-22012014-12-0174132210.6092/issn.1973-2201/45944201Testing normality of latent variables in the polychoric correlationCarlos Almeida0Michel Mouchart1Yachay City of Knowledge, Urcuqui, Universidad de las Fuerzas Armadas - ESPE, SangolquiUniversité catholique de Louvain, Louvain-la-NeuveThis paper explores the feasibility of simultaneously facing three sources of complexity in Bayesian testing, namely (i) testing a parametric against a non-parametric alternative (ii) adjusting for partial observability (iii) developing a test under a Bayesian encompassing principle. Testing the normality of latent variables in the polychoric correlation model is taken as a case study. This paper starts from the specification of the model defining the polychoric correlation in the framework of manifest ordinal variables viewed as discretizations of underlying latent variables. Taking advantage of the fact that in this model, the marginal distributions of the latent variables are not identified, we use the approach of copula. Some identification issues are analysed. Next, we develop a Bayesian encompassing specification test for testing the Gaussianity of the underlying copula and consider the discretization model as a case of partial observability. The computational feasibility, the numerical stability and the discriminating power of the procedure are checked through a simulation experiment. An application completes the paper by illustrating the working of the procedure on a meta-analysis of clinical trials on acute migraine. The final section proposes, in the form of conclusions, an evaluation of the actual achievements of the paper.http://rivista-statistica.unibo.it/article/view/4594Bayesian encompassingpartial observabilitynonparametric specification testdiscretization
collection DOAJ
language English
format Article
sources DOAJ
author Carlos Almeida
Michel Mouchart
spellingShingle Carlos Almeida
Michel Mouchart
Testing normality of latent variables in the polychoric correlation
Statistica
Bayesian encompassing
partial observability
nonparametric specification test
discretization
author_facet Carlos Almeida
Michel Mouchart
author_sort Carlos Almeida
title Testing normality of latent variables in the polychoric correlation
title_short Testing normality of latent variables in the polychoric correlation
title_full Testing normality of latent variables in the polychoric correlation
title_fullStr Testing normality of latent variables in the polychoric correlation
title_full_unstemmed Testing normality of latent variables in the polychoric correlation
title_sort testing normality of latent variables in the polychoric correlation
publisher University of Bologna
series Statistica
issn 0390-590X
1973-2201
publishDate 2014-12-01
description This paper explores the feasibility of simultaneously facing three sources of complexity in Bayesian testing, namely (i) testing a parametric against a non-parametric alternative (ii) adjusting for partial observability (iii) developing a test under a Bayesian encompassing principle. Testing the normality of latent variables in the polychoric correlation model is taken as a case study. This paper starts from the specification of the model defining the polychoric correlation in the framework of manifest ordinal variables viewed as discretizations of underlying latent variables. Taking advantage of the fact that in this model, the marginal distributions of the latent variables are not identified, we use the approach of copula. Some identification issues are analysed. Next, we develop a Bayesian encompassing specification test for testing the Gaussianity of the underlying copula and consider the discretization model as a case of partial observability. The computational feasibility, the numerical stability and the discriminating power of the procedure are checked through a simulation experiment. An application completes the paper by illustrating the working of the procedure on a meta-analysis of clinical trials on acute migraine. The final section proposes, in the form of conclusions, an evaluation of the actual achievements of the paper.
topic Bayesian encompassing
partial observability
nonparametric specification test
discretization
url http://rivista-statistica.unibo.it/article/view/4594
work_keys_str_mv AT carlosalmeida testingnormalityoflatentvariablesinthepolychoriccorrelation
AT michelmouchart testingnormalityoflatentvariablesinthepolychoriccorrelation
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