SUMMARY A generalized mover–stayer model is described for conditionally Markov processes under panel observation. Marginally the model represents a mixture of nested continuous-time Markov processes in which sub-models are defined by constraining some transition intensities to zero between two or more states of a full model. A Fisher scoring algorithm is described which facilitates maximum likelihood estimation based only on the first derivatives of the transition probability matrices. The model is fit to data from a smoking prevention study and is shown to provide a significant improvement in fit over a time-homogeneous Markov model. Extensions are developed which facilitate examination of covariate effects on both the transition intensities and the mover–stayer probabilities.
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CITATION STYLE
Cook, R. J. (2002). A generalized mover-stayer model for panel data. Biostatistics, 3(3), 407–420. https://doi.org/10.1093/biostatistics/3.3.407