NeurIPS2022

Implicit Bias of Gradient Descent on Reparametrized Models: On Equivalence to Mirror Descent

Zhiyuan Li, Tianhao Wang, Jason D. Lee, Sanjeev Arora

37 citations

Abstract

As part of the effort to understand implicit bias of gradient descent in overparametrized models, several results have shown how the training trajectory on the overparametrized model can be understood as mirror descent on a different objective. The main result here is a characterization of this phenomenon under a notion termed commuting parametrization, which encompasses all the previous results in this setting. It is shown that gradient flow with any commuting parametrization is equivalent to continuous mirror descent with a related Legendre function. Conversely, continuous mirror descent with any Legendre function can be viewed as gradient flow with a related commuting parametrization. The latter result relies upon Nash's embedding theorem. * Equal contribution 2 Related work Implicit bias. With high overparametrization as used in modern machine learning, there usually exist multiple optima, and it is crucial to understand which particular solutions are found by the optimization algorithm. Implicit bias of gradient descent for classification tasks with separable data was studied in