We propose a new variational family for Bayesian neural networks. We decompose the variational posterior into two components, where the radial component captures the strength of each neuron in terms of its magnitude; while the directional component captures the statistical dependencies among the weight parameters. The dependencies learned via the directional density provide better modeling performance compared to the widely-used Gaussian mean-field-type variational family. In addition, the strength of input and output neurons learned via our posterior provides a structured way to compress neural networks. Indeed, experiments show that our variational family improves predictive performance and yields compressed networks simultaneously
The main challenge in Bayesian models is to determine the posterior for the model parameters. Alread...
Hierarchical Bayesian networks and neural networks with stochastic hidden units are commonly perceiv...
We view perceptual tasks such as vision and speech recognition as inference problems where the goal ...
We propose a new variational family for Bayesian neural networks. We decompose the variational poste...
We introduce a variational Bayesian neural network where the parameters are governed via a probabili...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Stochastic variational inference for Bayesian deep neural network (DNN) requires specifying priors a...
We consider the problem of Bayesian parameter estimation for deep neural networks, which is importan...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Bayesian inference is known to provide a general framework for incorporating prior knowledge or spec...
Amortized variational inference, whereby the inferred latent variable posterior distributions are pa...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
We advocate an optimization-centric view of Bayesian inference. Our inspiration is the representatio...
The main challenge in Bayesian models is to determine the posterior for the model parameters. Alread...
Hierarchical Bayesian networks and neural networks with stochastic hidden units are commonly perceiv...
We view perceptual tasks such as vision and speech recognition as inference problems where the goal ...
We propose a new variational family for Bayesian neural networks. We decompose the variational poste...
We introduce a variational Bayesian neural network where the parameters are governed via a probabili...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Stochastic variational inference for Bayesian deep neural network (DNN) requires specifying priors a...
We consider the problem of Bayesian parameter estimation for deep neural networks, which is importan...
The last decade witnessed a growing interest in Bayesian learning. Yet, the technicality of the topi...
Bayesian inference is known to provide a general framework for incorporating prior knowledge or spec...
Amortized variational inference, whereby the inferred latent variable posterior distributions are pa...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
We advocate an optimization-centric view of Bayesian inference. Our inspiration is the representatio...
The main challenge in Bayesian models is to determine the posterior for the model parameters. Alread...
Hierarchical Bayesian networks and neural networks with stochastic hidden units are commonly perceiv...
We view perceptual tasks such as vision and speech recognition as inference problems where the goal ...