Back To Index Previous Article Next Article Full Text

Statistica Sinica 35 (2025), 91-110

AN ADAPTIVELY RESIZED PARAMETRIC BOOTSTRAP
FOR INFERENCE IN HIGH-DIMENSIONAL
GENERALIZED LINEAR MODELS

Qian Zhao* and Emmanuel J. Candès

University of Massachusetts Amherst and Stanford University

Abstract: Accurate statistical inference in logistic regression models remains a critical challenge when the ratio between the number of parameters and sample size is not negligible. This is because approximations based on either classical asymptotic theory or bootstrap calculations are grossly off the mark. This paper introduces a resized bootstrap method to infer model parameters in arbitrary dimensions. As in the parametric bootstrap, we resample observations from a distribution, which depends on an estimated regression coefficient sequence. The novelty is that this estimate is actually far from the maximum likelihood estimate (MLE). This estimate is informed by recent theory studying properties of the MLE in high dimensions, and is obtained by appropriately shrinking the MLE towards the origin. We demonstrate that the resized bootstrap method yields valid confidence intervals in both simulated and real data examples. Our methods extend to other high-dimensional generalized linear models.

Keywords words and phrases: Bootstrap, confidence interval, generalized linear models, high-dimensional statistics.

Back To Index Previous Article Next Article Full Text