June 2023 Orthogonal statistical learning
Dylan J. Foster, Vasilis Syrgkanis
Author Affiliations +
Ann. Statist. 51(3): 879-908 (June 2023). DOI: 10.1214/23-AOS2258

Abstract

We provide nonasymptotic excess risk guarantees for statistical learning in a setting where the population risk with respect to which we evaluate the target parameter depends on an unknown nuisance parameter that must be estimated from data. We analyze a two-stage sample splitting meta-algorithm that takes as input arbitrary estimation algorithms for the target parameter and nuisance parameter. We show that if the population risk satisfies a condition called Neyman orthogonality, the impact of the nuisance estimation error on the excess risk bound achieved by the meta-algorithm is of second order. Our theorem is agnostic to the particular algorithms used for the target and nuisance and only makes an assumption on their individual performance. This enables the use of a plethora of existing results from machine learning to give new guarantees for learning with a nuisance component. Moreover, by focusing on excess risk rather than parameter estimation, we can provide rates under weaker assumptions than in previous works and accommodate settings in which the target parameter belongs to a complex nonparametric class. We provide conditions on the metric entropy of the nuisance and target classes such that oracle rates of the same order, as if we knew the nuisance parameter, are achieved.

Acknowledgements

We are grateful to Xiaohong Chen for pointing out additional related work. Part of this work was completed while DF was an intern at Microsoft Research. DF acknowledges support from the Facebook PhD fellowship and NSF Tripods grant #1740751.

Citation

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Dylan J. Foster. Vasilis Syrgkanis. "Orthogonal statistical learning." Ann. Statist. 51 (3) 879 - 908, June 2023. https://doi.org/10.1214/23-AOS2258

Information

Received: 1 September 2020; Revised: 1 August 2022; Published: June 2023
First available in Project Euclid: 20 August 2023

MathSciNet: MR4630373
zbMATH: 07732733
Digital Object Identifier: 10.1214/23-AOS2258

Subjects:
Primary: 62G08
Secondary: 62C20 , 62D20

Keywords: Double machine learning , local Rademacher complexity , Neyman orthogonality , Policy learning , Statistical learning , treatment effects

Rights: Copyright © 2023 Institute of Mathematical Statistics

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Vol.51 • No. 3 • June 2023
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