Machine learning and phone data can improve targeting of humanitarian aid

Author:

Aiken Emily,Bellue Suzanne,Karlan Dean,Udry Chris,Blumenstock Joshua E.ORCID

Abstract

AbstractThe COVID-19 pandemic has devastated many low- and middle-income countries, causing widespread food insecurity and a sharp decline in living standards1. In response to this crisis, governments and humanitarian organizations worldwide have distributed social assistance to more than 1.5 billion people2. Targeting is a central challenge in administering these programmes: it remains a difficult task to rapidly identify those with the greatest need given available data3,4. Here we show that data from mobile phone networks can improve the targeting of humanitarian assistance. Our approach uses traditional survey data to train machine-learning algorithms to recognize patterns of poverty in mobile phone data; the trained algorithms can then prioritize aid to the poorest mobile subscribers. We evaluate this approach by studying a flagship emergency cash transfer program in Togo, which used these algorithms to disburse millions of US dollars worth of COVID-19 relief aid. Our analysis compares outcomes—including exclusion errors, total social welfare and measures of fairness—under different targeting regimes. Relative to the geographic targeting options considered by the Government of Togo, the machine-learning approach reduces errors of exclusion by 4–21%. Relative to methods requiring a comprehensive social registry (a hypothetical exercise; no such registry exists in Togo), the machine-learning approach increases exclusion errors by 9–35%. These results highlight the potential for new data sources to complement traditional methods for targeting humanitarian assistance, particularly in crisis settings in which traditional data are missing or out of date.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference59 articles.

1. Egger, D. et al. Falling living standards during the COVID-19 crisis: quantitative evidence from nine developing countries. Sci. Adv. 7, eabe0997 (2021).

2. Gentilini, U., Almenfi, M., Orton, I. & Dale, P. Social Protection and Jobs Responses to COVID-19: A Real-Time Review of Country Measures World Bank Policy Brief (World Bank, 2020).

3. Hanna, R. & Olken, B. A. Universal basic incomes versus targeted transfers: anti-poverty programs in developing countries. J. Econ. Perspect. 32, 201–226 (2018).

4. Lindert, K., Karippacheril, T. G., Caillava, I. R. & Chávez, K. N. Sourcebook on the Foundations of Social Protection Delivery Systems (World Bank, 2020).

5. Lakner, C., Yonzan, N., Mahler, D., Aguilar, R. A. & Wu, H. Updated estimates of the impact of COVID-19 on global poverty: looking back at 2020 and the outlook for 2021. World Bank Blogs https://blogs.worldbank.org/opendata/updated-estimates-impact-covid-19-global-poverty-looking-back-2020-and-outlook-2021 (2021).

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