Biometrika Jun 05, 2026

Automatic debiased machine learning for covariate shifts

Authors
V Chernozhukov M Newey W K Newey R Singh V Syrgkanis
Research Topics
Machine Learning
Paper Information
  • Journal:
    Biometrika
  • DOI:
    10.1093/biomet/asag033
  • Published:
    June 05, 2026
  • Added to Tracker:
    Jun 06, 2026
Abstract

SUMMARY We present machine learning estimators for causal and predictive parameters under covariate shift, where covariate distributions differ between training and target populations. One such parameter is the average effect of a policy that alters the covariate distribution, such as a treatment modifying surrogate covariates used to predict long-term outcomes. Another example is the average treatment effect for a population with a shifted covariate distribution. We propose a debiased machine learning method to estimate a broad class of these parameters in a statistically reliable and automatic manner. Our method eliminates regularization biases arising from the use of machine learning tools in high-dimensional settings, and relies solely on the parameter’s defining formula. It employs data fusion by combining samples of target and training data to eliminate biases. We give asymptotic theory that allows the sample sizes of training and target data to grow at different rates. Computational experiments and an empirical study on the impact of minimum wage increases on teen employment, using the difference-in-differences framework with unconfoundedness, demonstrate the effectiveness of our method.

Author Details
V Chernozhukov
Author
M Newey
Author
W K Newey
Author
R Singh
Author
V Syrgkanis
Author
Research Topics & Keywords
Machine Learning
Research Area
Citation Information
APA Format
V Chernozhukov , M Newey , W K Newey , R Singh & V Syrgkanis (2026) . Automatic debiased machine learning for covariate shifts. Biometrika , 10.1093/biomet/asag033.
BibTeX Format
@article{paper1211,
  title = { Automatic debiased machine learning for covariate shifts },
  author = { V Chernozhukov and M Newey and W K Newey and R Singh and V Syrgkanis },
  journal = { Biometrika },
  year = { 2026 },
  doi = { 10.1093/biomet/asag033 },
  url = { https://doi.org/10.1093/biomet/asag033 }
}