Suppose represents the
vector of observed data and
is a
vector of random effects. Models fit by the GLIMMIX procedure assume that
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where is a differentiable monotonic link function and
is its inverse. The matrix
is an
matrix of rank k, and
is an
design matrix for the random effects. The random effects are assumed to be normally distributed with mean
and variance matrix
.
The GLMM contains a linear mixed model inside the inverse link function. This model component is referred to as the linear predictor,
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The variance of the observations, conditional on the random effects, is
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The matrix is a diagonal matrix and contains the variance functions of the model. The variance function expresses the variance of a
response as a function of the mean. The GLIMMIX procedure determines the variance function from the DIST= option in the MODEL statement or from the user-supplied variance function (see the section Implied Variance Functions). The matrix
is a variance matrix specified by the user through the RANDOM statement. If the conditional distribution of the data contains an additional scale parameter, it is either part of the variance functions or part of the
matrix. For example, the gamma distribution with mean
has the variance function
and
. If your model calls for G-side random effects only (see the next section), the procedure models
, where
is the identity matrix. Table 41.20 identifies the distributions for which
.