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Probabilistic population forecasts for small regions
Goes, Julius; Engelhardt, Henriette (2026): Probabilistic population forecasts for small regions, in: Demographic Research, Rostock: Max Planck Institute for Demographic Research, Jg. 54, Nr. 23, S. 719–762, doi: 10.4054/demres.2026.54.23.
Faculty/Chair:
Author:
By:
... ; Engelhardt, Henriette
Title of the Journal:
Demographic Research
ISSN:
2363-7064
Publisher Information:
Year of publication:
2026
Volume:
54
Issue:
23
Pages:
Language:
English
Abstract:
Background: Age-specific population forecasts for small areas or subnational regions are a valuable tool for local governments. However, typical population projection methods based on the cohort-component approach are difficult to apply on a smaller subnational scale.
Objective: We introduce Bayesian methods suitable for obtaining reliable age-specific population forecasts for small regions using the cohort-component method.
Methods: Our approach improves fertility forecasting by extending the Lee–Carter model with an age-region interaction term. We propose to forecast net-migration counts using skewed error terms, and introduce a Dirichlet regression to model migration age patterns as well as age proportions of fertility.
Results: We run our model to produce age-specific population forecasts for a set of 13 heterogeneous regions in Bavaria, Germany. We compare our method with other standard approaches and find that it produces superior out-of-sample forecasts according to both point measures and scoring rules.
Conclusions: The findings suggest that the proposed Bayesian methods offer good predictive accuracy and are suitable in obtaining precise forecasts of age-specific population for smaller geo-graphical regions.
Contribution: We introduce a new method for the probabilistic projection of subnational population that works well and outperforms other current methods.
Objective: We introduce Bayesian methods suitable for obtaining reliable age-specific population forecasts for small regions using the cohort-component method.
Methods: Our approach improves fertility forecasting by extending the Lee–Carter model with an age-region interaction term. We propose to forecast net-migration counts using skewed error terms, and introduce a Dirichlet regression to model migration age patterns as well as age proportions of fertility.
Results: We run our model to produce age-specific population forecasts for a set of 13 heterogeneous regions in Bavaria, Germany. We compare our method with other standard approaches and find that it produces superior out-of-sample forecasts according to both point measures and scoring rules.
Conclusions: The findings suggest that the proposed Bayesian methods offer good predictive accuracy and are suitable in obtaining precise forecasts of age-specific population for smaller geo-graphical regions.
Contribution: We introduce a new method for the probabilistic projection of subnational population that works well and outperforms other current methods.
GND Keywords: ;  ; 
Oberfranken
Bevölkerungsprognose
Bayes-Verfahren
Keywords:
population
DDC Classification:
RVK Classification:
Peer Reviewed:
Yes:
International Distribution:
Yes:
Open Access Journal:
Yes:
Type:
Article
Activation date:
April 15, 2026
Versioning
Question on publication
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https://fis.uni-bamberg.de/handle/uniba/114726