Heterogeneous coefficients, control variables, and identification of treatment effects

Whitney Newey, S. Stouli
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Abstract

Multidimensional heterogeneity and endogeneity are important features of models with multiple treatments. We consider a heterogeneous coefficients model where the outcome is a linear combination of dummy treatment variables, with each variable representing a different kind of treatment. We use control variables to give necessary and sufficient conditions for identification of average treatment effects. With mutually exclusive treatments we find that, provided the generalized propensity scores (Imbens, 2000) are bounded away from zero with probability one, a simple identification condition is that their sum be bounded away from one with probability one. These results generalize the classical identification result of Rosenbaum and Rubin (1983) for binary treatments.
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异质性系数、控制变量和治疗效果的识别
多维异质性和内生性是多处理模型的重要特征。我们考虑一个异质性系数模型,其中结果是虚拟治疗变量的线性组合,每个变量代表一种不同的治疗。利用控制变量给出了判别平均处理效果的充分必要条件。通过互斥处理,我们发现,假设广义倾向得分(Imbens, 2000)以概率1离零有界,一个简单的识别条件是它们的总和以概率1离一有界。这些结果推广了Rosenbaum和Rubin(1983)对二元处理的经典识别结果。
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