Skip to yearly menu bar Skip to main content


Poster

Deep Linear Networks with Arbitrary Loss: All Local Minima Are Global

Thomas Laurent · James von Brecht

Hall B #123

Abstract:

We consider deep linear networks with arbitrary convex differentiable loss. We provide a short and elementary proof of the fact that all local minima are global minima if the hidden layers are either 1) at least as wide as the input layer, or 2) at least as wide as the output layer. This result is the strongest possible in the following sense: If the loss is convex and Lipschitz but not differentiable then deep linear networks can have sub-optimal local minima.

Live content is unavailable. Log in and register to view live content