Myungok LeeKeunbaik LeeJung-Bok Lee
In longitudinal studies investigators frequently have to assess and address potential biases introduced by missing data. New methods are proposed for modeling longitudinal categorical data with nonignorable dropout using marginalized transition models and shared random effects models. Random effects are introduced for both serial dependence of outcomes and nonignorable missingness. Fisher‐scoring and Quasi–Newton algorithms are developed for parameter estimation. Methods are illustrated with a real dataset.
Keunbaik LeeYongsung JooJae Keun YooJung-Bok Lee
Jennifer ChanDoris Y. P. LeungS. T. Boris ChoyWai Yin Wan
Ying YuanRoderick J. A. Little