Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models

Grouped data, such as repeated measures and longitudinal data, are increasingly collected in different areas of application, as varied as clinical trials, epidemiological studies, and educational testing. It is often of interest, for these data, to explore possible relationships between one or more...

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Main Author: José C. Pinheiro
Format: Article
Language:English
Published: Austrian Statistical Society 2016-04-01
Series:Austrian Journal of Statistics
Online Access:http://www.ajs.or.at/index.php/ajs/article/view/346
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author José C. Pinheiro
author_facet José C. Pinheiro
author_sort José C. Pinheiro
collection DOAJ
description Grouped data, such as repeated measures and longitudinal data, are increasingly collected in different areas of application, as varied as clinical trials, epidemiological studies, and educational testing. It is often of interest, for these data, to explore possible relationships between one or more response variables and available covariates. Because of the within-group correlation typically present with this type of data, special regression models that allow the joint estimation of mean and covariance parameters need to be used. Two main approaches have been proposed to represent the covariance structure of the data with these models: (i) via the use of random effects, the so-called conditional model and (ii) through direct representation of the covariance structure of the responses, known as the marginal approach. Here we discuss and compare these two approaches in the context of linear and non-linear regression models with additive Gaussian errors, using a real data example to motivate and illustrate the discussion.
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spelling doaj.art-108c08d8e8a84f6593d688b86c531e5a2022-12-21T20:08:41ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2016-04-0135110.17713/ajs.v35i1.346Conditional versus Marginal Covariance Representation for Linear and Nonlinear ModelsJosé C. Pinheiro0Dept. of Biostatistics, Novartis Pharmaceuticals, East Hanover, USAGrouped data, such as repeated measures and longitudinal data, are increasingly collected in different areas of application, as varied as clinical trials, epidemiological studies, and educational testing. It is often of interest, for these data, to explore possible relationships between one or more response variables and available covariates. Because of the within-group correlation typically present with this type of data, special regression models that allow the joint estimation of mean and covariance parameters need to be used. Two main approaches have been proposed to represent the covariance structure of the data with these models: (i) via the use of random effects, the so-called conditional model and (ii) through direct representation of the covariance structure of the responses, known as the marginal approach. Here we discuss and compare these two approaches in the context of linear and non-linear regression models with additive Gaussian errors, using a real data example to motivate and illustrate the discussion.http://www.ajs.or.at/index.php/ajs/article/view/346
spellingShingle José C. Pinheiro
Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
Austrian Journal of Statistics
title Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
title_full Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
title_fullStr Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
title_full_unstemmed Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
title_short Conditional versus Marginal Covariance Representation for Linear and Nonlinear Models
title_sort conditional versus marginal covariance representation for linear and nonlinear models
url http://www.ajs.or.at/index.php/ajs/article/view/346
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