Individualized Treatment Allocations with Distributional Welfare

Yifan Cui, Sukjin Han
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Abstract

In this paper, we explore optimal treatment allocation policies that target distributional welfare. Most literature on treatment choice has considered utilitarian welfare based on the conditional average treatment effect (ATE). While average welfare is intuitive, it may yield undesirable allocations especially when individuals are heterogeneous (e.g., with outliers) - the very reason individualized treatments were introduced in the first place. This observation motivates us to propose an optimal policy that allocates the treatment based on the conditional \emph{quantile of individual treatment effects} (QoTE). Depending on the choice of the quantile probability, this criterion can accommodate a policymaker who is either prudent or negligent. The challenge of identifying the QoTE lies in its requirement for knowledge of the joint distribution of the counterfactual outcomes, which is generally hard to recover even with experimental data. Therefore, we introduce minimax optimal policies that are robust to model uncertainty. We then propose a range of identifying assumptions under which we can point or partially identify the QoTE. We establish the asymptotic bound on the regret of implementing the proposed policies. We consider both stochastic and deterministic rules. In simulations and two empirical applications, we compare optimal decisions based on the QoTE with decisions based on other criteria.
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个体化治疗分配与分配福利
本文探讨了以分配福利为目标的最优待遇分配政策。大多数关于治疗选择的文献都考虑了基于条件平均治疗效果(ATE)的功利主义福利。虽然平均福利是直观的,但它可能会产生不受欢迎的分配,特别是当个体是异质的(例如,有异常值)——这就是首先引入个性化治疗的原因。这一观察结果促使我们提出一种基于\emph{个体治疗效果的条件分位数分配治疗的最佳策略}(quote)。根据分位数概率的选择,这一标准可以容纳审慎或疏忽的政策制定者。识别引文的挑战在于它需要了解反事实结果的联合分布,这通常即使使用实验数据也很难恢复。因此,我们引入了对模型不确定性具有鲁棒性的极大极小最优策略。然后,我们提出一系列识别假设,在这些假设下,我们可以指向或部分识别报价。我们建立了实施所提出的政策的遗憾的渐近界。我们同时考虑随机规则和确定性规则。在模拟和两个经验应用中,我们比较了基于quote的最优决策与基于其他标准的决策。
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