Selectively regularizing parameter updates during fine-tuning, as opposed to applying uniform regularization, leads to improved in-distribution generalization and out-of-distribution robustness in foundation models.
AUTOFT is a data-driven approach that significantly improves generalization to out-of-distribution inputs, surpassing existing methods.