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Assaying Out-Of-Distribution Generalization in Transfer Learning

Authors :
Wenzel, Florian
Dittadi, Andrea
Gehler, Peter Vincent
Simon-Gabriel, Carl-Johann
Horn, Max
Zietlow, Dominik
Kernert, David
Russell, Chris
Brox, Thomas
Schiele, Bernt
Schölkopf, Bernhard
Locatello, Francesco
Publication Year :
2022

Abstract

Since out-of-distribution generalization is a generally ill-posed problem, various proxy targets (e.g., calibration, adversarial robustness, algorithmic corruptions, invariance across shifts) were studied across different research programs resulting in different recommendations. While sharing the same aspirational goal, these approaches have never been tested under the same experimental conditions on real data. In this paper, we take a unified view of previous work, highlighting message discrepancies that we address empirically, and providing recommendations on how to measure the robustness of a model and how to improve it. To this end, we collect 172 publicly available dataset pairs for training and out-of-distribution evaluation of accuracy, calibration error, adversarial attacks, environment invariance, and synthetic corruptions. We fine-tune over 31k networks, from nine different architectures in the many- and few-shot setting. Our findings confirm that in- and out-of-distribution accuracies tend to increase jointly, but show that their relation is largely dataset-dependent, and in general more nuanced and more complex than posited by previous, smaller scale studies.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.09239
Document Type :
Working Paper