This paper introduces a new neural network based prior for real valued functions on $\mathbb R^d$ which, by construction, is more easily and cheaply scaled up in the domain dimension $d$ compared to the usual Karhunen-Lo\`eve function space prior. The new prior is a Gaussian neural network prior, where each weight and bias has an independent Gaussian prior, but with the key difference that the variances decrease in the width of the network in such a way that the resulting function is almost surely well defined in the limit of an infinite width network. We show that in a Bayesian treatment of inferring unknown functions, the induced posterior over functions is amenable to Monte Carlo sampling using Hilbert space Markov chain Monte Carlo (MCM...
Many scientific and engineering problems require to perform Bayesian inferences in function spaces, ...
The analytic inference, e.g. predictive distribution being in closed form, may be an appealing benef...
Neural networks have shown great predictive power when dealing with various unstructured data such a...
Monte Carlo methods are are an ubiquitous tool in modern statistics. Under the Bayesian paradigm, th...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
Bayesian neural networks are theoretically well-understood only in the infinite-width limit, where G...
The Bayesian treatment of neural networks dictates that a prior distribution is specified over their...
Conventional training methods for neural networks involve starting al a random location in the solut...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
In this article we consider Bayesian inference associated to deep neural networks (DNNs) and in part...
We propose a Bayesian framework for regression problems, which covers areas which are usually dealt ...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
The Bayesian analysis of neural networks is difficult because the prior over functions has a complex...
The full Bayesian method for applying neural networks to a prediction problem is to set up the prior...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
Many scientific and engineering problems require to perform Bayesian inferences in function spaces, ...
The analytic inference, e.g. predictive distribution being in closed form, may be an appealing benef...
Neural networks have shown great predictive power when dealing with various unstructured data such a...
Monte Carlo methods are are an ubiquitous tool in modern statistics. Under the Bayesian paradigm, th...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
Bayesian neural networks are theoretically well-understood only in the infinite-width limit, where G...
The Bayesian treatment of neural networks dictates that a prior distribution is specified over their...
Conventional training methods for neural networks involve starting al a random location in the solut...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
In this article we consider Bayesian inference associated to deep neural networks (DNNs) and in part...
We propose a Bayesian framework for regression problems, which covers areas which are usually dealt ...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
The Bayesian analysis of neural networks is difficult because the prior over functions has a complex...
The full Bayesian method for applying neural networks to a prediction problem is to set up the prior...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
Many scientific and engineering problems require to perform Bayesian inferences in function spaces, ...
The analytic inference, e.g. predictive distribution being in closed form, may be an appealing benef...
Neural networks have shown great predictive power when dealing with various unstructured data such a...