Inducing Interpretable Representations with Variational Autoencoders
Siddharth, N., Paige, Brooks, Desmaison, Alban, Van de Meent, Jan-Willem, Wood, Frank, Goodman, Noah D., Kohli, Pushmeet, Torr, Philip H. S.
We develop a framework for incorporating structured graphical models in the \emph{encoders} of variational autoencoders (VAEs) that allows us to induce interpretable representations through approximate variational inference. This allows us to both perform reasoning (e.g. classification) under the structural constraints of a given graphical model, and use deep generative models to deal with messy, high-dimensional domains where it is often difficult to model all the variation. Learning in this framework is carried out end-to-end with a variational objective, applying to both unsupervised and semi-supervised schemes.
Nov-22-2016