Population projection for many developing countries could be quite a challenging task for the demographers mostly due to lack of availability of enough reliable data. The objective of this paper is to present an overview of the existing methods for population forecasting and to propose an alternative based on the Bayesian statistics, combining the formality of inference. The analysis has been made using Markov Chain Monte Carlo (MCMC) technique for Bayesian methodology available with the software Win BUGS. Convergence diagnostic techniques available with the Win BUGS software have been applied to ensure the convergence of the chains necessary for the implementation of MCMC. The Bayesian approach allows for the use of observed data and expert judgements by means of appropriate priors, and a more realistic population forecasts, along with associated uncertainty, has been possible.
CITATION STYLE
Mahsin, M., & Hossain, S. S. (2012). Population forecasts for Bangladesh, using a Bayesian methodology. Journal of Health, Population and Nutrition, 30(4), 456–463. https://doi.org/10.3329/jhpn.v30i4.13331
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