On Baseline Conditions for Zero-Inflated Longitudinal Count Data |
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Authors: | Antonello Maruotti Valentina Raponi |
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Affiliation: | 1. Dipartimento di Istituzioni Pubbliche, Economia e Società , Università di Roma Tre , Roma , Italy;2. Southampton Statistical Sciences Research Institute &3. School of Mathematics , University of Southampton , UK;4. Dipartimento di Scienze Statistiche , Sapienza Università di Roma , Piazzale Aldo Moro , Roma , Italy |
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Abstract: | ![]() We describe a mixed-effect hurdle model for zero-inflated longitudinal count data, where a baseline variable is included in the model specification. Association between the count data process and the endogenous baseline variable is modeled through a latent structure, assumed to be dependent across equations. We show how model parameters can be estimated in a finite mixture context, allowing for overdispersion, multivariate association and endogeneity of the baseline variable. The model behavior is investigated through a large-scale simulation experiment. An empirical example on health care utilization data is provided. |
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Keywords: | Baseline conditions Hurdle model Longitudinal count data Zero-inflation |
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