New framework pinpoints conditions that make data augmentation improve robustness

Achieving high reliability in AI systems—such as autonomous vehicles that stay on course even in snowstorms or medical AI that can diagnose cancer from low-resolution images—depends heavily on model robustness. While data augmentation has long been a go-to technique for enhancing this robustness, the specific conditions under which it works best remained unclear—until now.