具有异质性治疗效果的连续治疗的聚类剂量-反应函数估计器

Cerqua Augusto, Di Stefano Roberta, Mattera Raffaele
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引用次数: 0

摘要

许多治疗都是非随机分配的,具有连续性,即使治疗强度相同,也会表现出不同的效果。综上所述,这些特点给因果效应的识别带来了巨大挑战,因为现有的估计方法都无法提供平均因果剂量-反应函数的无偏估计值。为了弥补这一不足,我们引入了聚类剂量-反应函数(Cl-DRF),这是一种新颖的估计方法,旨在识别不同亚组的治疗强度与因变量之间的连续因果关系。这种方法利用了理论和数据驱动的异质性来源,并在条件独立性和正向性假设的宽松版本下运行,这些假设只要求在每个确定的亚组中满足。为了证明 Cl-DRF 估计器的能力,我们提供了模拟证据和实证应用,考察了欧洲凝聚基金对经济增长的影响。
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The Clustered Dose-Response Function Estimator for continuous treatment with heterogeneous treatment effects
Many treatments are non-randomly assigned, continuous in nature, and exhibit heterogeneous effects even at identical treatment intensities. Taken together, these characteristics pose significant challenges for identifying causal effects, as no existing estimator can provide an unbiased estimate of the average causal dose-response function. To address this gap, we introduce the Clustered Dose-Response Function (Cl-DRF), a novel estimator designed to discern the continuous causal relationships between treatment intensity and the dependent variable across different subgroups. This approach leverages both theoretical and data-driven sources of heterogeneity and operates under relaxed versions of the conditional independence and positivity assumptions, which are required to be met only within each identified subgroup. To demonstrate the capabilities of the Cl-DRF estimator, we present both simulation evidence and an empirical application examining the impact of European Cohesion funds on economic growth.
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