English

Double Debiased Machine Learning Nonparametric Inference with Continuous Treatments

Econometrics 2023-10-02 v8

Abstract

We propose a doubly robust inference method for causal effects of continuous treatment variables, under unconfoundedness and with nonparametric or high-dimensional nuisance functions. Our double debiased machine learning (DML) estimators for the average dose-response function (or the average structural function) and the partial effects are asymptotically normal with non-parametric convergence rates. The first-step estimators for the nuisance conditional expectation function and the conditional density can be nonparametric or ML methods. Utilizing a kernel-based doubly robust moment function and cross-fitting, we give high-level conditions under which the nuisance function estimators do not affect the first-order large sample distribution of the DML estimators. We provide sufficient low-level conditions for kernel, series, and deep neural networks. We justify the use of kernel to localize the continuous treatment at a given value by the Gateaux derivative. We implement various ML methods in Monte Carlo simulations and an empirical application on a job training program evaluation

Keywords

Cite

@article{arxiv.2004.03036,
  title  = {Double Debiased Machine Learning Nonparametric Inference with Continuous Treatments},
  author = {Kyle Colangelo and Ying-Ying Lee},
  journal= {arXiv preprint arXiv:2004.03036},
  year   = {2023}
}
R2 v1 2026-06-23T14:41:58.705Z