Title of article :
A combined beta and normal random-effects model for repeated, overdispersed binary and binomial data
Author/Authors :
Molenberghs، نويسنده , , Geert and Verbeke، نويسنده , , Geert and Iddi، نويسنده , , Samuel and Demétrio، نويسنده , , Clarice G.B.، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2012
Pages :
16
From page :
94
To page :
109
Abstract :
Non-Gaussian outcomes are often modeled using members of the so-called exponential family. Notorious members are the Bernoulli model for binary data, leading to logistic regression, and the Poisson model for count data, leading to Poisson regression. Two of the main reasons for extending this family are (1) the occurrence of overdispersion, meaning that the variability in the data is not adequately described by the models, which often exhibit a prescribed mean-variance link, and (2) the accommodation of hierarchical structure in the data, stemming from clustering in the data which, in turn, may result from repeatedly measuring the outcome, for various members of the same family, etc. The first issue is dealt with through a variety of overdispersion models, such as, for example, the beta-binomial model for grouped binary data and the negative-binomial model for counts. Clustering is often accommodated through the inclusion of random subject-specific effects. Though not always, one conventionally assumes such random effects to be normally distributed. While both of these phenomena may occur simultaneously, models combining them are uncommon. This paper starts from the broad class of generalized linear models accommodating overdispersion and clustering through two separate sets of random effects. We place particular emphasis on so-called conjugate random effects at the level of the mean for the first aspect and normal random effects embedded within the linear predictor for the second aspect, even though our family is more general. The binary and binomial cases are our focus. Apart from model formulation, we present an overview of estimation methods, and then settle for maximum likelihood estimation with analytic-numerical integration. The methodology is applied to two datasets of which the outcomes are binary and binomial, respectively.
Keywords :
Strong conjugacy , Binomial model , Bernoulli model , Beta-binomial model , Conjugacy , logistic-normal model , Maximum likelihood
Journal title :
Journal of Multivariate Analysis
Serial Year :
2012
Journal title :
Journal of Multivariate Analysis
Record number :
1565887
Link To Document :
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