Estimating the uncertainty in deep neural network predictions is crucial for many real-world applications. A common approach to model uncertainty is to choose a parametric distribution and fit the data to it using maximum likelihood estimation. The chosen parametric form can be a poor fit to the data-generating distribution, resulting in unreliable uncertainty estimates. In this work, we propose SampleNet, a flexible and scalable architecture for modeling uncertainty that avoids specifying a parametric form on the output distribution. SampleNets do so by defining an empirical distribution using samples that are learned with the Energy Score and regularized with the Sinkhorn Divergence. SampleNets are shown to be able to well-fit a wide rang...
Ensembles of models often yield improvements in system performance. These ensemble approaches have a...
Neural networks are flexible models capable of capturing complicated data relationships. However, ne...
Deep neural networks are in the limelight of machine learning with their excellent performance in ma...
Estimating the uncertainty in deep neural network predictions is crucial for many real-world applica...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
Deep neural networks have amply demonstrated their prowess but estimating the reliability of their p...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Despite the popularity of Convolutional Neural Networks (CNN), the problem of uncertainty quantifica...
Deep neural network (DNN) regression models are widely used in applications requiring state-of-the-a...
We present a new type of probabilistic model which we call DISsimilarity COefficient Networks (DISCO...
Being able to model uncertainty is a vital property for any intelligent agent. In an environment in ...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
The inaccuracy of neural network models on inputs that do not stem from the distribution underlying ...
Whereas the ability of deep networks to produce useful predictions on many kinds of data has been am...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Ensembles of models often yield improvements in system performance. These ensemble approaches have a...
Neural networks are flexible models capable of capturing complicated data relationships. However, ne...
Deep neural networks are in the limelight of machine learning with their excellent performance in ma...
Estimating the uncertainty in deep neural network predictions is crucial for many real-world applica...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
Deep neural networks have amply demonstrated their prowess but estimating the reliability of their p...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Despite the popularity of Convolutional Neural Networks (CNN), the problem of uncertainty quantifica...
Deep neural network (DNN) regression models are widely used in applications requiring state-of-the-a...
We present a new type of probabilistic model which we call DISsimilarity COefficient Networks (DISCO...
Being able to model uncertainty is a vital property for any intelligent agent. In an environment in ...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
The inaccuracy of neural network models on inputs that do not stem from the distribution underlying ...
Whereas the ability of deep networks to produce useful predictions on many kinds of data has been am...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Ensembles of models often yield improvements in system performance. These ensemble approaches have a...
Neural networks are flexible models capable of capturing complicated data relationships. However, ne...
Deep neural networks are in the limelight of machine learning with their excellent performance in ma...