Mapping poverty using mobile phone and satellite data

Author:

Steele Jessica E.12ORCID,Sundsøy Pål Roe3ORCID,Pezzulo Carla1,Alegana Victor A.1ORCID,Bird Tomas J.1ORCID,Blumenstock Joshua4ORCID,Bjelland Johannes3,Engø-Monsen Kenth3ORCID,de Montjoye Yves-Alexandre5ORCID,Iqbal Asif M.6,Hadiuzzaman Khandakar N.6,Lu Xin278,Wetter Erik29,Tatem Andrew J.1210,Bengtsson Linus27ORCID

Affiliation:

1. Geography and Environment, University of Southampton, University Road, Building 44, Southampton, UK

2. Flowminder Foundation, Roslagsgatan 17, Stockholm, Sweden

3. Telenor Group Research, Oslo, Norway

4. School of Information, University of California, Berkeley, CA, USA

5. Data Science Institute, Imperial College London, London, UK

6. Grameenphone Ltd, Dhaka, Bangladesh

7. Public Health Sciences, Karolinska Institute, Stockholm, Sweden

8. College of Information System and Management, National University of Defense Technology, Changsha, Hunan, People's Republic of China

9. Stockholm School of Economics, Saltmätargatan 13-17, Stockholm, Sweden

10. John E Fogarty International Center, National Institutes of Health, Bethesda, MD, USA

Abstract

Poverty is one of the most important determinants of adverse health outcomes globally, a major cause of societal instability and one of the largest causes of lost human potential. Traditional approaches to measuring and targeting poverty rely heavily on census data, which in most low- and middle-income countries (LMICs) are unavailable or out-of-date. Alternate measures are needed to complement and update estimates between censuses. This study demonstrates how public and private data sources that are commonly available for LMICs can be used to provide novel insight into the spatial distribution of poverty. We evaluate the relative value of modelling three traditional poverty measures using aggregate data from mobile operators and widely available geospatial data. Taken together, models combining these data sources provide the best predictive power (highest r 2 = 0.78) and lowest error, but generally models employing mobile data only yield comparable results, offering the potential to measure poverty more frequently and at finer granularity. Stratifying models into urban and rural areas highlights the advantage of using mobile data in urban areas and different data in different contexts. The findings indicate the possibility to estimate and continually monitor poverty rates at high spatial resolution in countries with limited capacity to support traditional methods of data collection.

Funder

Bill and Melinda Gates Foundation

Publisher

The Royal Society

Subject

Biomedical Engineering,Biochemistry,Biomaterials,Bioengineering,Biophysics,Biotechnology

Reference68 articles.

1. Abolishing inequity, a necessity for poverty reduction and the realisation of child mortality targets

2. Population and poverty | UNFPA - United Nations Population Fund. 2016 See http://www.unfpa.org/resources/population-and-poverty (accessed: 21 January 2016).

3. Braithwaite A Dasandi N Hudson D. 2014 Does poverty cause conflict? Isolating the causal origins of the conflict trap. Confl. Manag. Peace Sci. 33 45–66. (doi:10.1177/0738894214559673)

4. United Nations General Assembly. 2015 Transforming our world: the 2030 Agenda for Sustainable Development.

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