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Modeling internal migration flows in sub-Saharan Africa using census microdata

Modeling internal migration flows in sub-Saharan Africa using census microdata
Modeling internal migration flows in sub-Saharan Africa using census microdata
Globalization and the expansion of transport networks has transformed migration into a major policy issue because of its effects on a range of phenomena, including resource flows in economics, urbanization, as well as the epidemiology of infectious diseases. Quantifying and modeling human migration can contribute towards a better understanding of the nature of migration and help develop evidence-based interventions for disease control policy, economic development, and resource allocation. In this study we paired census microdata from 10 countries in sub-Saharan Africa with additional spatial datasets to develop models for the internal migration flows in each country, including key drivers that reflect the changing social, demographic, economic, and environmental landscapes. We assessed how well these gravity-type spatial interaction models can both explain and predict migration. Results show that the models can explain up to 87 percent of internal migration, can predict future within-country migration with correlations of up to 0.91, and can also predict migration in other countries with correlations of up to 0.72. Findings show that such models are useful tools for understanding migration as well as predicting flows in regions where data are sparse, and can contribute towards strategic economic development, planning, and disease control targeting.
2049-5838
Garcia, A.J.
1aaef0c7-66d4-4d3b-9804-925c6e6698a1
Pindolia, D.K.
b2bc60d9-c6e9-47a2-b8bf-1bf163b6d11a
Lopiano, K.K.
ee7ebbfd-508d-429b-8e38-75f1ca6edf42
Tatem, A.J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Garcia, A.J.
1aaef0c7-66d4-4d3b-9804-925c6e6698a1
Pindolia, D.K.
b2bc60d9-c6e9-47a2-b8bf-1bf163b6d11a
Lopiano, K.K.
ee7ebbfd-508d-429b-8e38-75f1ca6edf42
Tatem, A.J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e

Garcia, A.J., Pindolia, D.K., Lopiano, K.K. and Tatem, A.J. (2014) Modeling internal migration flows in sub-Saharan Africa using census microdata. Migration Studies. (doi:10.1093/migration/mnu036).

Record type: Article

Abstract

Globalization and the expansion of transport networks has transformed migration into a major policy issue because of its effects on a range of phenomena, including resource flows in economics, urbanization, as well as the epidemiology of infectious diseases. Quantifying and modeling human migration can contribute towards a better understanding of the nature of migration and help develop evidence-based interventions for disease control policy, economic development, and resource allocation. In this study we paired census microdata from 10 countries in sub-Saharan Africa with additional spatial datasets to develop models for the internal migration flows in each country, including key drivers that reflect the changing social, demographic, economic, and environmental landscapes. We assessed how well these gravity-type spatial interaction models can both explain and predict migration. Results show that the models can explain up to 87 percent of internal migration, can predict future within-country migration with correlations of up to 0.91, and can also predict migration in other countries with correlations of up to 0.72. Findings show that such models are useful tools for understanding migration as well as predicting flows in regions where data are sparse, and can contribute towards strategic economic development, planning, and disease control targeting.

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More information

Published date: 2014
Organisations: Global Env Change & Earth Observation, WorldPop, Geography & Environment, Population, Health & Wellbeing (PHeW)

Identifiers

Local EPrints ID: 367712
URI: http://eprints.soton.ac.uk/id/eprint/367712
ISSN: 2049-5838
PURE UUID: f6c504e1-1c9d-4a4a-93af-1ae36b2a15db
ORCID for A.J. Tatem: ORCID iD orcid.org/0000-0002-7270-941X

Catalogue record

Date deposited: 02 Sep 2014 16:46
Last modified: 15 Mar 2024 03:43

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Contributors

Author: A.J. Garcia
Author: D.K. Pindolia
Author: K.K. Lopiano
Author: A.J. Tatem ORCID iD

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