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Master's Dissertation
DOI
https://doi.org/10.11606/D.45.2004.tde-09062011-095707
Document
Author
Full name
Mayra Ivanoff Lora
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Paulo, 2004
Supervisor
Committee
Singer, Julio da Motta (President)
Ho, Linda Lee
Pereira, Carlos Alberto de Braganca
Title in Portuguese
Modelos de regressão beta-binomial/poisson para contagens bivariadas
Keywords in Portuguese
contagens bivariadas
dados longitudinais
efeitos aleatórios
modelos de regressão
sobredispersão
Abstract in Portuguese
Propomos um modelo Beta-Binomial/Poisson para dados provenientes de um estudo com doentes de Parkinson, que consistiu em contar durante um minuto quantas tarefas foram realizadas e destas, quantas de maneira correta, antes e depois de um treinamento. O objetivo era verificar se o treinamento aumentava o número de tentativas e a porcentagem de acerto, o que destaca o aspecto bivariado do problema. Esse modelo considera tal aspecto, usa uma distribuição mais adequada a dados de contagem e ainda suporta a sobredispersão presente nos dados. Obtemos estimadores de máxima verossimilhança dos parâmetros utilizando um algoritmo de Newton-Raphson. Ilustramos a aplicação da metodologia desenvolvida aos dados do estudo.
Title in English
Beta-binomial/Poisson regression models for repeated bivariate counts
Keywords in English
bivariate counts
longitudinal data
overdispersion
random effects
regression models
Abstract in English
We propose a Beta-Binomial/Poisson model to the data from a study with Parkinson disease patients, which consisted in counting for one minute how many trials were attempted and how many of them were successful, before and after a training period. The main goal was to check if training increased the number of trials and success probability, which emphasizes the bivariate aspect of the problem. This model takes this aspect into account, uses a distribution which is usually more adequate to count data and supports the overdispersion present in the data. We obtain the maximum likelihood estimators using a Newton-Raphson algorithm. For illustration, the methodology is applied to the data from study.
 
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Dissertacao.pdf (253.95 Kbytes)
Publishing Date
2011-06-16
 
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