Specifying a Bayesian prior is notoriously difficult for complex models such as neural networks. Reasoning about parameters is made challenging by the high-dimensionality and over-parameterization of the space. Priors that seem benign and uninformative can have unintuitive and detrimental effects on a model's predictions. For this reason, we propose predictive complexity priors: a functional prior that is defined by comparing the model's predictions to those of a reference model. Although originally defined on the model outputs, we transfer the prior to the model parameters via a change of variables. The traditional Bayesian workflow can then proceed as usual. We apply our predictive complexity prior to high-dimensional regression, reasonin...
| openaire: EC/H2020/101016775/EU//INTERVENEEncoding domain knowledge into the prior over the high-d...
Existing Bayesian treatments of neural networks are typically characterized by weak prior and approx...
Stochastic variational inference for Bayesian deep neural network (DNN) requires specifying priors a...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
The Bayesian treatment of neural networks dictates that a prior distribution is specified over their...
In the last few decades, model complexity has received a lot of press. While many methods have been ...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
The need for function estimation in label-limited settings is common in the natural sciences. At the...
While many implementations of Bayesian neural networks use large, complex hierarchical priors, in mu...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Bayesian inference is known to provide a general framework for incorporating prior knowledge or spec...
| openaire: EC/H2020/101016775/EU//INTERVENEEncoding domain knowledge into the prior over the high-d...
Existing Bayesian treatments of neural networks are typically characterized by weak prior and approx...
Stochastic variational inference for Bayesian deep neural network (DNN) requires specifying priors a...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
The Bayesian treatment of neural networks dictates that a prior distribution is specified over their...
In the last few decades, model complexity has received a lot of press. While many methods have been ...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
The need for function estimation in label-limited settings is common in the natural sciences. At the...
While many implementations of Bayesian neural networks use large, complex hierarchical priors, in mu...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Bayesian inference is known to provide a general framework for incorporating prior knowledge or spec...
| openaire: EC/H2020/101016775/EU//INTERVENEEncoding domain knowledge into the prior over the high-d...
Existing Bayesian treatments of neural networks are typically characterized by weak prior and approx...
Stochastic variational inference for Bayesian deep neural network (DNN) requires specifying priors a...