2024
DOI: 10.1017/dap.2023.38
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Predicting social assistance beneficiaries: On the social welfare damage of data biases

Stephan Dietrich,
Daniele Malerba,
Franziska Gassmann

Abstract: Cash transfer programs are the most common anti-poverty tool in low- and middle-income countries, reaching more than one billion people globally. Benefits are typically targeted using prediction models. In this paper, we develop an extended targeting assessment framework for proxy means testing that accounts for societal sensitivity to targeting errors. Using a social welfare framework, we weight targeting errors based on their position in the welfare distribution and adjust for different levels of societal in… Show more

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