Estimation and Inference for Causal Functions with Multiway Clustered Data

Nan Liu, Yanbo Liu, Yuya Sasaki
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Abstract

This paper proposes methods of estimation and uniform inference for a general class of causal functions, such as the conditional average treatment effects and the continuous treatment effects, under multiway clustering. The causal function is identified as a conditional expectation of an adjusted (Neyman-orthogonal) signal that depends on high-dimensional nuisance parameters. We propose a two-step procedure where the first step uses machine learning to estimate the high-dimensional nuisance parameters. The second step projects the estimated Neyman-orthogonal signal onto a dictionary of basis functions whose dimension grows with the sample size. For this two-step procedure, we propose both the full-sample and the multiway cross-fitting estimation approaches. A functional limit theory is derived for these estimators. To construct the uniform confidence bands, we develop a novel resampling procedure, called the multiway cluster-robust sieve score bootstrap, that extends the sieve score bootstrap (Chen and Christensen, 2018) to the novel setting with multiway clustering. Extensive numerical simulations showcase that our methods achieve desirable finite-sample behaviors. We apply the proposed methods to analyze the causal relationship between mistrust levels in Africa and the historical slave trade. Our analysis rejects the null hypothesis of uniformly zero effects and reveals heterogeneous treatment effects, with significant impacts at higher levels of trade volumes.
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多向聚类数据的因果函数估计与推理
本文提出了在多向聚类条件下,对条件平均治疗效果和连续治疗效果等一类因果函数进行估计和统一推断的方法。因果函数被识别为依赖于高维滋扰参数的调整(奈曼正交)信号的条件期望。我们提出了一个两步程序,第一步使用机器学习来估计高维干扰参数。第二步将估计的奈曼正交信号投影到基函数字典上,该字典的维度随样本大小而增长。针对这两步程序,我们提出了全样本和多路交叉拟合估计方法。为这些估计方法推导了函数极限理论。为了构建均匀置信带,我们开发了一种新颖的采样程序,称为多向聚类稳健筛分自举法(multi-way cluster-robust sieve score bootstrap),它将筛分自举法(Chen 和 Christensen,2018)扩展到了具有多向聚类的新颖环境中。大量的数值模拟表明,我们的方法实现了理想的有限样本行为。我们运用所提出的方法分析了非洲的不信任水平与历史上奴隶贸易之间的因果关系。我们的分析否定了效应均为零的零假设,并揭示了异质性的处理效应,在较高的贸易量水平上具有显著的影响。
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