On the training dynamics of deep networks with $L_2$ regularization
Lewkowycz, Aitor, Gur-Ari, Guy
These empirical relations hold when the network is overparameterized. They can be used to predict the optimal regularization parameter of a given model. In addition, based on these observations we propose a dynamical schedule for the regularization parameter that improves performance and speeds up training. We test these proposals in modern image classification settings. Finally, we show that these empirical relations can be understood theoretically in the context of infinitely wide networks.
Jun-15-2020