𝔖 Bobbio Scriptorium
✦   LIBER   ✦

Marginalized transition random effect models for multivariate longitudinal binary data

✍ Scribed by Ozlem Ilk; Michael J. Daniels


Publisher
John Wiley and Sons
Year
2007
Tongue
French
Weight
223 KB
Volume
35
Category
Article
ISSN
0319-5724

No coin nor oath required. For personal study only.

✦ Synopsis


Abstract

Generalized linear models with random effects and/or serial dependence are commonly used to analyze longitudinal data. However, the computation and interpretation of marginal covariate effects can be difficult. This led Heagerty (1999, 2002) to propose models for longitudinal binary data in which a logistic regression is first used to explain the average marginal response. The model is then completed by introducing a conditional regression that allows for the longitudinal, within‐subject, dependence, either via random effects or regressing on previous responses. In this paper, the authors extend the work of Heagerty to handle multivariate longitudinal binary response data using a triple of regression models that directly model the marginal mean response while taking into account dependence across time and across responses. Markov Chain Monte Carlo methods are used for inference. Data from the Iowa Youth and Families Project are used to illustrate the methods.


πŸ“œ SIMILAR VOLUMES


Covariate measurement error and the esti
✍ Tor D. Tosteson; John P. Buonaccorsi; Eugene Demidenko πŸ“‚ Article πŸ“… 1998 πŸ› John Wiley and Sons 🌐 English βš– 163 KB πŸ‘ 3 views

We explore the effects of measurement error in a time-varying covariate for a mixed model applied to a longitudinal study of plasma levels and dietary intake of beta-carotene. We derive a simple expression for the bias of large sample estimates of the variance of random effects in a longitudinal mod