A Bayesian hierarchical model for categorical longitudinal data from a social survey of immigrants |
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Authors: | A. N. Pettitt T. T. Tran M. A. Haynes J. L. Hay |
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Affiliation: | Queensland University of Technology, Brisbane, Australia; University of Queensland, Brisbane, Australia; Queensland University of Technology, Brisbane, Australia |
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Abstract: | Summary. The paper investigates a Bayesian hierarchical model for the analysis of categorical longitudinal data from a large social survey of immigrants to Australia. Data for each subject are observed on three separate occasions, or waves, of the survey. One of the features of the data set is that observations for some variables are missing for at least one wave. A model for the employment status of immigrants is developed by introducing, at the first stage of a hierarchical model, a multinomial model for the response and then subsequent terms are introduced to explain wave and subject effects. To estimate the model, we use the Gibbs sampler, which allows missing data for both the response and the explanatory variables to be imputed at each iteration of the algorithm, given some appropriate prior distributions. After accounting for significant covariate effects in the model, results show that the relative probability of remaining unemployed diminished with time following arrival in Australia. |
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Keywords: | Bayesian hierarchical models Generalized linear mixed models Longitudinal data analysis Missing data Random effects |
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