On Dropout and Nuclear Norm Regularization

05/28/2019
by   Poorya Mianjy, et al.
0

We give a formal and complete characterization of the explicit regularizer induced by dropout in deep linear networks with squared loss. We show that (a) the explicit regularizer is composed of an ℓ_2-path regularizer and other terms that are also re-scaling invariant, (b) the convex envelope of the induced regularizer is the squared nuclear norm of the network map, and (c) for a sufficiently large dropout rate, we characterize the global optima of the dropout objective. We validate our theoretical findings with empirical results.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset