| openaire: EC/H2020/101016775/EU//INTERVENEBayesian neural networks (BNNs) can account for both aleatoric and epistemic uncertainty. However, in BNNs the priors are often specified over the weights which rarely reflects true prior knowledge in large and complex neural network architectures. We present a simple approach to incorporate prior knowledge in BNNs based on external summary information about the predicted classification probabilities for a given dataset. The available summary information is incorporated as augmented data and modeled with a Dirichlet process, and we derive the corresponding Summary Evidence Lower BOund. The approach is founded on Bayesian principles, and all hyperparameters have a proper probabilistic interpretatio...
The Laplace approximation yields a tractable marginal likelihood for Bayesian neural networks. This ...
The ability to output accurate predictive uncertainty estimates is vital to a reliable classifier. S...
For stochastic models with intractable likelihood functions, approximate Bayesian computation offers...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
The need for function estimation in label-limited settings is common in the natural sciences. At the...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Bayesian neural networks have successfully designed and optimized a robust neural network model in m...
Bayesian neural networks have shown great promise in many applications where calibrated uncertainty ...
We introduce a probabilistic robustness measure for Bayesian Neural Networks (BNNs), defined as the ...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
The Conditional Neural Process (CNP) family of models offer a promising direction to tackle few-shot...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
While many implementations of Bayesian neural networks use large, complex hierarchical priors, in mu...
The Laplace approximation yields a tractable marginal likelihood for Bayesian neural networks. This ...
The ability to output accurate predictive uncertainty estimates is vital to a reliable classifier. S...
For stochastic models with intractable likelihood functions, approximate Bayesian computation offers...
Deep neural networks have bested notable benchmarks across computer vision, reinforcement learning, ...
The need for function estimation in label-limited settings is common in the natural sciences. At the...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Bayesian neural networks have successfully designed and optimized a robust neural network model in m...
Bayesian neural networks have shown great promise in many applications where calibrated uncertainty ...
We introduce a probabilistic robustness measure for Bayesian Neural Networks (BNNs), defined as the ...
Bayesian neural networks attempt to combine the strong predictive performance of neural networks wit...
In recent years, Neural Networks (NN) have become a popular data-analytic tool in Statistics, Compu...
The Conditional Neural Process (CNP) family of models offer a promising direction to tackle few-shot...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
While many implementations of Bayesian neural networks use large, complex hierarchical priors, in mu...
The Laplace approximation yields a tractable marginal likelihood for Bayesian neural networks. This ...
The ability to output accurate predictive uncertainty estimates is vital to a reliable classifier. S...
For stochastic models with intractable likelihood functions, approximate Bayesian computation offers...