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Program targeting with machine learning and mobile phone data: Evidence from an anti-poverty intervention in Afghanistan

Emily Aiken, Guadalupe Bedoya, Joshua Blumenstock, Aidan Coville

2022Journal of Development Economics40 citationsDOIOpen Access PDF

Abstract

Can mobile phone data improve program targeting? By combining rich survey data from a “big push” anti-poverty program in Afghanistan with detailed mobile phone logs from program beneficiaries, we study the extent to which machine learning methods can accurately differentiate ultra-poor households eligible for program benefits from ineligible households. We show that machine learning methods leveraging mobile phone data can identify ultra-poor households nearly as accurately as survey-based measures of consumption and wealth; and that combining survey-based measures with mobile phone data produces classifications more accurate than those based on a single data source.

Topics & Concepts

Mobile phonePovertyPhoneComputer scienceIntervention (counseling)Consumption (sociology)Machine learningGSM servicesSurvey data collectionData scienceInternet privacyMobile deviceWorld Wide WebMobile technologyTelecommunicationsEconomic growthPsychologyStatisticsEconomicsMathematicsLinguisticsPhilosophySocial scienceSociologyPsychiatryICT in Developing CommunitiesIncome, Poverty, and InequalityHuman Mobility and Location-Based Analysis
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