Full Citation
Title: A Bayesian hierarchical model to estimate subnational populations of women of reproductive age
Citation Type: Conference Paper
Publication Year: 2018
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Abstract: Accurate estimates of subnational populations are important for policy formulation and monitoring population health indicators. In particular, estimates of the number of women of reproductive age affect measures of maternal mortality, contraceptive prevalence and fertility. However, in many developing countries, data on population counts are limited and are of poor quality, and so levels are unclear. We present a Bayesian hierarchical model to estimate female populations at the subnational level. The model builds on a cohort component projection framework, incorporates data on population counts and migration, and uses characteristic mortality schedules to obtain population estimates and uncertainty levels. The model is applied to estimate and project populations by county in Kenya for 1979-2020.
Url: https://www.monicaalexander.com/pdf/bayesian_kenya.pdf
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Authors: Alexander, Monica; Alkema, Leontine
Conference Name: PAA 2018
Publisher Location: Denver, CO
Data Collections: IPUMS International
Topics: Fertility and Mortality
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