A Factorial Mixture Prior for Compositional Deep Generative Models
Abstract
We assume that a high-dimensional datum, like an image, is a compositional expression of a set of properties, with a complicated non-linear relationship between the datum and its properties. This paper proposes a factorial mixture prior for capturing latent properties, thereby adding structured compositionality to deep generative models. The prior treats a latent vector as belonging to Cartesian product of subspaces, each of which is quantized separately with a Gaussian mixture model. Some mixture components can be set to represent properties as observed random variables whenever labeled properties are present. Through a combination of stochastic variational inference and gradient descent, a method for learning how to infer discrete properties in an unsupervised or semi-supervised way is outlined and empirically evaluated.
Cite
@article{arxiv.1812.07480,
title = {A Factorial Mixture Prior for Compositional Deep Generative Models},
author = {Ulrich Paquet and Sumedh K. Ghaisas and Olivier Tieleman},
journal= {arXiv preprint arXiv:1812.07480},
year = {2018}
}
Comments
16 pagers, 10 figures