Estimation and Inference on Heterogeneous Treatment Effects in High-Dimensional Dynamic Panels under Weak Dependence
Vira Semenova, Matt Goldman, Victor Chernozhukov, Matt Taddy

TL;DR
This paper develops novel estimation and inference methods for high-dimensional, heterogeneous treatment effects in dynamic panel data, leveraging orthogonalization, machine learning, and debiasing techniques to improve accuracy and applicability.
Contribution
It introduces a new generic cross-fitting method for weakly dependent data and combines it with orthogonal learners and debiasing for high-dimensional CATE estimation in panel data.
Findings
Effective estimation of price elasticities in scanner data.
New methods applicable even in cross-sectional i.i.d. cases.
Improved convergence rates when CATE is simpler than nuisance regressions.
Abstract
This paper provides estimation and inference methods for a conditional average treatment effects (CATE) characterized by a high-dimensional parameter in both homogeneous cross-sectional and unit-heterogeneous dynamic panel data settings. In our leading example, we model CATE by interacting the base treatment variable with explanatory variables. The first step of our procedure is orthogonalization, where we partial out the controls and unit effects from the outcome and the base treatment and take the cross-fitted residuals. This step uses a novel generic cross-fitting method we design for weakly dependent time series and panel data. This method "leaves out the neighbors" when fitting nuisance components, and we theoretically power it by using Strassen's coupling. As a result, we can rely on any modern machine learning method in the first step, provided it learns the residuals well…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Economic Policies and Impacts · Innovation Policy and R&D
