Learning bounds for doubly-robust covariate shift adaptation

Abstract

Distribution shift between the training domain and the test domain poses a key challenge for modern machine learning. An extensively studied instance is the covariate shift, where the marginal distribution of covariates differs across domains, while the conditional distribution of outcome remains the same. The doubly-robust (DR) estimator, recently introduced by kato2023double, combines the density ratio estimation with a pilot regression model and demonstrates asymptotic normality and n-consistency, even when the pilot estimates converge slowly. However, the prior arts has focused exclusively on deriving asymptotic results and has left open the question of non-asymptotic guarantees for the DR estimator. This paper establishes the first non-asymptotic learning bounds for the DR covariate shift adaptation. Our main contributions are two-fold: ( 1) We establish structure-agnostic high-probability upper bounds on the excess target risk of the DR estimator that depend only on the L2-errors of the pilot estimates and the Rademacher complexity of the model class, without assuming specific procedures to obtain the pilot estimate, and ( 2) under well-specified parameterized models, we analyze the DR covariate shift adaptation based on modern techniques for non-asymptotic analysis of MLE, whose key terms governed by the Fisher information mismatch term between the source and target distributions. Together, these findings bridge asymptotic efficiency properties and a finite-sample out-of-distribution generalization bounds, providing a comprehensive theoretical underpinnings for the DR covariate shift adaptation.

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