Targeting Development Aid with Machine Learning and Mobile Phone Data: Evidence from an Anti-Poverty Intervention in Afghanistan

Emily L. Aiken, Guadalupe Bedoya, Aidan Coville, J. Blumenstock
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引用次数: 12

Abstract

Recent papers demonstrate that non-traditional data, from mobile phones and other digital sensors, can be used to roughly estimate the wealth of individual subscribers. This paper asks a question more directly relevant to development policy: Can non-traditional data be used to more efficiently target development aid? 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 other households deemed ineligible. We show that supervised learning methods leveraging mobile phone data can identify ultra-poor households as accurately as standard survey-based measures of poverty, including 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. We discuss the implications and limitations of these methods for targeting extreme poverty in marginalized populations.
以机器学习和移动电话数据为目标的发展援助:来自阿富汗反贫困干预的证据
最近的论文表明,来自手机和其他数字传感器的非传统数据可以用来粗略估计个人用户的财富。本文提出了一个与发展政策更直接相关的问题:非传统数据能否更有效地用于确定发展援助的目标?通过将来自阿富汗“大力推动”反贫困项目的丰富调查数据与项目受益人的详细手机记录相结合,我们研究了机器学习方法在多大程度上能够准确区分有资格获得项目福利的超贫困家庭与其他被认为不符合条件的家庭。我们表明,利用手机数据的监督学习方法可以像基于标准调查的贫困指标(包括消费和财富)一样准确地识别超贫困家庭;而且,将基于调查的措施与手机数据相结合,产生的分类比基于单一数据源的分类更准确。我们讨论了这些方法对边缘化人群极端贫困的影响和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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