JOURNAL ARTICLE

Doubly debiased lasso: High-dimensional inference under hidden confounding

Zijian GuoDomagoj ĆevidPeter Bühlmann

Year: 2022 Journal:   The Annals of Statistics Vol: 50 (3)Pages: 1320-1347   Publisher: Institute of Mathematical Statistics

Abstract

Inferring causal relationships or related associations from observational data can be invalidated by the existence of hidden confounding. We focus on a high-dimensional linear regression setting, where the measured covariates are affected by hidden confounding and propose the Doubly Debiased Lasso estimator for individual components of the regression coefficient vector. Our advocated method simultaneously corrects both the bias due to estimation of high-dimensional parameters as well as the bias caused by the hidden confounding. We establish its asymptotic normality and also prove that it is efficient in the Gauss-Markov sense. The validity of our methodology relies on a dense confounding assumption, i.e. that every confounding variable affects many covariates. The finite sample performance is illustrated with an extensive simulation study and a genomic application.

Keywords:
Covariate Confounding Lasso (programming language) Mathematics Estimator Statistics Econometrics Causal inference Inference Artificial intelligence Computer science

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88
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0.98
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Citation History

Topics

Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Advanced Causal Inference Techniques
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability
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