English

Structured and Efficient Variational Deep Learning with Matrix Gaussian Posteriors

Machine Learning 2016-06-24 v5 Machine Learning

Abstract

We introduce a variational Bayesian neural network where the parameters are governed via a probability distribution on random matrices. Specifically, we employ a matrix variate Gaussian \cite{gupta1999matrix} parameter posterior distribution where we explicitly model the covariance among the input and output dimensions of each layer. Furthermore, with approximate covariance matrices we can achieve a more efficient way to represent those correlations that is also cheaper than fully factorized parameter posteriors. We further show that with the "local reprarametrization trick" \cite{kingma2015variational} on this posterior distribution we arrive at a Gaussian Process \cite{rasmussen2006gaussian} interpretation of the hidden units in each layer and we, similarly with \cite{gal2015dropout}, provide connections with deep Gaussian processes. We continue in taking advantage of this duality and incorporate "pseudo-data" \cite{snelson2005sparse} in our model, which in turn allows for more efficient sampling while maintaining the properties of the original model. The validity of the proposed approach is verified through extensive experiments.

Keywords

Cite

@article{arxiv.1603.04733,
  title  = {Structured and Efficient Variational Deep Learning with Matrix Gaussian Posteriors},
  author = {Christos Louizos and Max Welling},
  journal= {arXiv preprint arXiv:1603.04733},
  year   = {2016}
}

Comments

Updated results with the original folds in the regression experiments. Appearing in the International Conference on Machine Learning (ICML) 2016

R2 v1 2026-06-22T13:11:28.757Z