Multiway Cluster Robust Double/Debiased Machine Learning
Harold D. Chiang, Kengo Kato, Yukun Ma, Yuya Sasaki
Abstract
This article investigates double/debiased machine learning (DML) under multiway clustered sampling environments. We propose a novel multiway cross-fitting algorithm and a multiway DML estimator based on this algorithm. We also develop a multiway cluster robust standard error formula. Simulations indicate that the proposed procedure has favorable finite sample performance. Applying the proposed method to market share data for demand analysis, we obtain larger two-way cluster robust standard errors for the price coefficient than nonrobust ones in the demand model.
Topics & Concepts
Cluster (spacecraft)Library sciencePolice departmentComputer sciencePsychologyOperating systemCriminologyBayesian Methods and Mixture ModelsStatistical Methods and InferenceConsumer Market Behavior and Pricing