arXiv Analytics

Sign in

arXiv:2207.10716 [cs.LG]AbstractReferencesReviewsResources

JAWS: Predictive Inference Under Covariate Shift

Drew Prinster, Anqi Liu, Suchi Saria

Published 2022-07-21Version 1

We propose \textbf{JAWS}, a series of wrapper methods for distribution-free uncertainty quantification tasks under covariate shift, centered on our core method \textbf{JAW}, the \textbf{JA}ckknife+ \textbf{W}eighted with likelihood-ratio weights. JAWS also includes computationally efficient \textbf{A}pproximations of JAW using higher-order influence functions: \textbf{JAWA}. Theoretically, we show that JAW relaxes the jackknife+'s assumption of data exchangeability to achieve the same finite-sample coverage guarantee even under covariate shift. JAWA further approaches the JAW guarantee in the limit of either the sample size or the influence function order under mild assumptions. Moreover, we propose a general approach to repurposing any distribution-free uncertainty quantification method and its guarantees to the task of risk assessment: a task that generates the estimated probability that the true label lies within a user-specified interval. We then propose \textbf{JAW-R} and \textbf{JAWA-R} as the repurposed versions of proposed methods for \textbf{R}isk assessment. Practically, JAWS outperform the state-of-the-art predictive inference baselines in a variety of biased real world data sets for both interval-generation and risk-assessment auditing tasks.

Related articles: Most relevant | Search more
arXiv:2101.08521 [cs.LG] (Published 2021-01-21)
Out-of-Distribution Generalization Analysis via Influence Function
arXiv:2404.00522 [cs.LG] (Published 2024-03-31)
Minimum-Norm Interpolation Under Covariate Shift
arXiv:1608.00250 [cs.LG] (Published 2016-07-31)
On Regularization Parameter Estimation under Covariate Shift