2603.00392 Gradient Norm Phase Transitions as Early Indicators of Generalization in Grokking
We investigate whether per-layer gradient L_2 norms exhibit phase transitions that predict generalization before test accuracy does. Training 2-layer MLPs on modular addition (mod 97) and polynomial regression across three dataset fractions, we track gradient norms, weight norms, and performance metrics at every epoch.