When a policy prioritizes one person over another, is it because they benefit more, or because they are preferred? This paper develops a method to uncover the values consistent with observed allocation decisions. We use machine learning methods to estimate how much each individual benefits from an intervention, and then reconcile its allocation with (i) the welfare weights assigned to different people; (ii) heterogeneous treatment effects of the intervention; and (iii) weights on different outcomes. We demonstrate this approach by analyzing Mexico's PROGRESA anti-poverty program. The analysis reveals that while the program prioritized certain subgroups -- such as indigenous households -- the fact that those groups benefited more implies that they were in fact assigned a lower welfare weight. The PROGRESA case illustrates how the method makes it possible to audit existing policies, and to design future policies that better align with values.
翻译:当一项政策优先考虑一个人而不是另一个人时,是因为他们受益更多,还是因为他们偏好?本文发展了一种方法来发现与遵守的分配决定相一致的价值观。我们使用机器学习方法来估计干预给每个人带来多少好处,然后将其分配与(一) 分配给不同人群的福利权重;(二) 干预的不同待遇效果;以及(三) 对不同结果的权重。我们通过分析墨西哥的PROGRESA反贫困方案来证明这一方法。分析表明,虽然该方案优先考虑某些分组 -- -- 例如土著家庭 -- -- 这一事实表明,这些分组受益较多的事实意味着他们实际上被赋予较低的福利权重。PROGRESA案说明了如何通过这种方法对现有政策进行审计,并设计更符合价值的未来政策。