Longitudinal data with binary and ordinal outcomes routinely appear in medical applications.
Existing methods are typically designed to deal with short measurement series.
In contrast, modern longitudinal data can result in large numbers of subject-specific serial
observations. In this framework, we consider multivariate probit models with random effects
to capture heterogeneity and autoregressive terms for describing the serial dependence.
Since likelihood inference for the proposed class of models is computationally burdensome because
of high dimensional intractable integrals, a pseudolikelihood approach is followed. The
methodology is motivated by the analysis of a large longitudinal study on the determinants
of migraine severity.
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Longitudinal data with binary and ordinal outcomes routinely appear in medical applications.
Existing methods are typically designed to deal with short measurement series.
In contrast, modern longitudinal data can result in large numbers of subject-specific serial
observations. In this framework, we consider multivariate probit models with random effects
to capture heterogeneity and autoregressive terms for describing the serial dependence.
Since likelihood inference for the proposed class...
»