Modeling Spatio-Temporal Dynamics of Obesity in Italian Regions Via Bayesian Beta Regression
Luciano Rota, Raffaele Argiento, Michela Cameletti

TL;DR
This study models the spatio-temporal evolution of obesity rates in Italian regions from 2010 to 2022 using a Bayesian Beta regression approach, highlighting regional heterogeneity and the importance of spatial-temporal effects.
Contribution
It introduces a Bayesian hierarchical Beta regression model with spatial and temporal random effects, incorporating variable selection to analyze regional obesity dynamics.
Findings
Regional heterogeneity and dependence significantly influence obesity rates.
Gender and spatial correlation are primary determinants of obesity prevalence.
Exogenous covariates have minimal impact at the regional level.
Abstract
In this paper we investigate the spatio-temporal dynamics of obesity rates across Italian regions from 2010 to 2022, aiming to identify spatial and temporal trends and assess potential heterogeneities. We implement a Bayesian hierarchical Beta regression model to analyze regional obesity rates, integrating spatial and temporal random effects, alongside gender and various exogenous predictors. The model leverages the Stochastic Search Variable Selection technique to identify significant predictors supported by the data. The analysis reveals both regional heterogeneity and dependence in obesity rates over the study period, emphasizing the importance of considering gender and spatial correlation in explaining its dynamics over time. In fact, the inclusion of structured spatial and temporal random effects captures the complexities of regional variations over time. These random effects,…
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