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Spatio-Temporal Patterns in Portuguese Regional Fertility Rates: A Bayesian Approach for Spatial Clustering of Curves

Author

Listed:
  • Zhang Zhen

    (Eli Lilly and Company, Indianapolis Indiana, U.S.A.)

  • Bhattacharjee Arnab

    (Heriot-Watt University and National Institute of Economic and Social Research, Spatial Economics and Econometrics Centre. (SEEC), Mary Burton Building, Edinburgh EH14 4AS, Scotland, United Kingdom.)

  • Marques João

    (University of Aveiro, Department of Social, Political and Territorial Sciences, Averiro, Portugal.)

  • Maiti Tapabrata

    (Michigan State University, Department of Statistics and Probability, East Lansing Michigan, U.S.A.)

Abstract

It is important for demographic analyses and policy-making to obtain accurate models of spatial diffusion, so that policy experiments can reflect endogenous spatial spillovers appropriately. Likewise, it is important to obtain accurate estimates and forecasts of demographic variables such as age-specific fertility rates, by regions and over time, as well as the uncertainty associated with such estimation. Here, we consider Bayesian hierarchical models with separable spatio-temporal dependence structure that can be estimated by borrowing strength from neighbouring regions and all years. Further, we do not consider the adjacency structure as a given, but rather as an object of inference. For this purpose, we use the local similarity of temporal patterns by developing a spatial clustering model based on Bayesian nonparametric smoothing techniques. The Bayesian inference provides the uncertainty associated with the clustering configurations that is typically lacking in classical analyses of large data sets in which a unique clustering representation can be insufficient. The proposed model is applied to 16-year data on age-specific fertility rates observed over 28 regions in Portugal, and provides statistical inference on the number of clusters, and local scaling and shrinkage levels. The corresponding central clustering configuration is able to capture spatial diffusion that has key demographic interpretations. Importantly, the exercise aids identification of peripheral regions with poor demographic prospects and development of regional policy for such places.

Suggested Citation

  • Zhang Zhen & Bhattacharjee Arnab & Marques João & Maiti Tapabrata, 2021. "Spatio-Temporal Patterns in Portuguese Regional Fertility Rates: A Bayesian Approach for Spatial Clustering of Curves," Journal of Official Statistics, Sciendo, vol. 37(3), pages 611-653, September.
  • Handle: RePEc:vrs:offsta:v:37:y:2021:i:3:p:611-653:n:9
    DOI: 10.2478/jos-2021-0028
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    References listed on IDEAS

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