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
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