Skip to yearly menu bar Skip to main content


Poster

Convex Two-Layer Modeling

Özlem Aslan · Hao Cheng · Xinhua Zhang · Dale Schuurmans

Harrah's Special Events Center, 2nd Floor

Abstract:

Latent variable prediction models, such as multi-layer networks, impose auxiliary latent variables between inputs and outputs to allow automatic inference of implicit features useful for prediction. Unfortunately, such models are difficult to train because inference over latent variables must be performed concurrently with parameter optimization---creating a highly non-convex problem. Instead of proposing another local training method, we develop a convex relaxation of hidden-layer conditional models that admits global training. Our approach extends current convex modeling approaches to handle two nested nonlinearities separated by a non-trivial adaptive latent layer. The resulting methods are able to acquire two-layer models that cannot be represented by any single-layer model over the same features, while improving training quality over local heuristics.

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