谁应该被治疗?治疗选择的经验福利最大化方法

Who Should Be Treated? Empirical Welfare Maximization Methods for Treatment Choice

Econometrica · 2018
被引 228 · 同刊同年前 5%
人大 A+FT50ABS 4*

中文导读

研究了经验福利最大化(EWM)方法,用于根据个体可观测特征分配治疗,在统计性能和实际实施上具有优势,并应用于国家JTPA研究数据。

Abstract

One of the main objectives of empirical analysis of experiments and quasi-experiments is to inform policy decisions that determine the allocation of treatments to individuals with different observable covariates. We study the properties and implementation of the Empirical Welfare Maximization (EWM) method, which estimates a treatment assignment policy by maximizing the sample analog of average social welfare over a class of candidate treatment policies. The EWM approach is attractive in terms of both statistical performance and practical implementation in realistic settings of policy design. Common features of these settings include: (i) feasible treatment assignment rules are constrained exogenously for ethical, legislative, or political reasons, (ii) a policy maker wants a simple treatment assignment rule based on one or more<br/>eligibility scores in order to reduce the dimensionality of individual observable characteristics, and/or (iii) the proportion of individuals who can receive the treatment is a priori limited due to a budget or a capacity constraint. We show that when the propensity score is known, the average social welfare attained by EWM rules converges at least at n1/2 rate to the maximum obtainable welfare uniformly over a minimally constrained class of data distributions, and this<br/>uniform convergence rate is minimax optimal. We examine how the uniform convergence rate depends on the richness of the class of candidate decision rules, the distribution of conditional treatment effects, and the lack of knowledge of the propensity score. We offer easily implementable algorithms for computing the EWM rule and an application using experimental data from the National JTPA Study.

经验福利最大化处理分配规则政策学习统计决策理论