Decision-making often requires accurate estimation of treatment effects from observational data. This is challenging as outcomes of alternative decisions are not observed and have to be estimated. Previous methods estimate outcomes based on unconfoundedness but neglect any constraints that unconfoundedness imposes on the outcomes. In this paper, we propose a novel regularization framework for estimating average treatment effects that exploits unconfoundedness. To this end, we formalize unconfoundedness as an orthogonality constraint, which ensures that the outcomes are orthogonal to the treatment assignment. This orthogonality constraint is then included in the loss function via a regularization. Based on our regularization framework, we develop deep orthogonal networks for unconfounded treatments (DONUT), which learn outcomes that are orthogonal to the treatment assignment. Using a variety of benchmark datasets for estimating average treatment effects, we demonstrate that DONUT outperforms the state-of-the-art substantially.
翻译:决策往往要求准确估计观察数据对治疗的影响。这具有挑战性,因为替代决定的结果没有被观察,必须加以估计。以前的方法根据无根据来估计结果,但忽视了对结果造成的任何限制。在本文件中,我们提出了一个新的规范化框架,用于估计利用无根据来估计平均治疗效果。为此,我们将无根据性正式确定为正统性限制,以确保结果与治疗任务一致。然后通过正规化将这种孔径限制纳入损失功能。根据我们的正规化框架,我们为无根据治疗开发深孔网络,以学习与治疗任务相悖的结果。我们用各种基准数据集来估计平均治疗效果,我们证明DONUT大大超越了最先进的状态。