SOTAVerified

A View on Out-of-Distribution Identification from a Statistical Testing Theory Perspective

2024-05-05Code Available0· sign in to hype

Alberto Caron, Chris Hicks, Vasilios Mavroudis

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We study the problem of efficiently detecting Out-of-Distribution (OOD) samples at test time in supervised and unsupervised learning contexts. While ML models are typically trained under the assumption that training and test data stem from the same distribution, this is often not the case in realistic settings, thus reliably detecting distribution shifts is crucial at deployment. We re-formulate the OOD problem under the lenses of statistical testing and then discuss conditions that render the OOD problem identifiable in statistical terms. Building on this framework, we study convergence guarantees of an OOD test based on the Wasserstein distance, and provide a simple empirical evaluation.

Reproductions