AI RESEARCH

Inside-Out: Measuring Generalization in Vision Transformers Through Inner Workings

arXiv CS.CV

ArXi:2604.08192v1 Announce Type: cross Reliable generalization metrics are fundamental to the evaluation of machine learning models. Especially in high-stakes applications where labeled target data are scarce, evaluation of models' generalization performance under distribution shift is a pressing need. We focus on two practical scenarios: (1) Before deployment, how to select the best model for unlabeled target data? (2) After deployment, how to monitor model performance under distribution shift? The central need in both cases is a reliable and label-free proxy metric.