Two Become One: Improving the Targeting of Conditional Cash Transfers with a Predictive Model of School Dropout

Cristian Crespo
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引用次数: 1

Abstract

ABSTRACT:This paper offers a methodology to improve targeting design and assessment when two or more groups need to be considered, and trade-offs exist between using different targeting mechanisms. The paper builds from the multidimensional targeting challenge facing conditional cash transfers (CCTs). I analyze whether a common CCT targeting mechanism, namely, a proxy means test (PMT), can identify the poor and future school dropouts effectively. Despite both being key target groups for CCTs, students at risk of dropping out are rarely considered for CCT allocation or in targeting assessments. Using rich administrative data sets from Chile to simulate different targeting mechanisms, I compare the targeting effectiveness of a PMT and other mechanisms based on a predictive model of school dropout. I build this model using machine learning algorithms. Using two novel metrics, I show that combining the outputs of the predictive model with the PMT increases targeting effectiveness except when the social valuation of the poor and future school dropouts differs to a large extent. More generally, public officials who value their key target groups equally may improve policy targeting by modifying their allocation procedures.
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合二为一:基于辍学预测模型的有条件现金转移定向改进
摘要:本文提出了一种方法,可以在需要考虑两个或两个以上的群体,以及使用不同的靶向机制之间存在权衡的情况下,改进靶向设计和评估。本文从有条件现金转移支付(cct)面临的多维目标挑战出发。我分析了一种常见的CCT目标机制,即代理经济状况调查(PMT),是否可以有效地识别贫困和未来的辍学生。尽管两者都是有条件现金援助的关键目标群体,但有辍学风险的学生很少被考虑用于有条件现金援助的分配或目标评估。利用来自智利的丰富的行政数据集来模拟不同的目标机制,我比较了基于辍学预测模型的PMT和其他机制的目标有效性。我用机器学习算法建立了这个模型。使用两个新指标,我表明,除了对穷人和未来辍学者的社会评价在很大程度上不同之外,将预测模型的输出与PMT相结合可以提高目标有效性。更一般地说,同样重视其主要目标群体的公职人员可以通过修改其分配程序来改进政策目标。
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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