Deep neural networks are in the limelight of machine learning with their excellent performance in many data-driven applications. However, they can lead to inaccurate predictions when queried in out-of-distribution data points, which can have detrimental effects especially in sensitive domains, such as healthcare and transportation, where erroneous predictions can be very costly and/or dangerous. Subsequently, quantifying the uncertainty of the output of a neural network is often leveraged to evaluate the confidence of its predictions, and ensemble models have proved to be effective in measuring the uncertainty by utilizing the variance of predictions over a pool of models. In this paper, we propose a novel approach for uncertainty quantific...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...
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 ...
Deep neural networks have amply demonstrated their prowess but estimating the reliability of their p...
Deep learning-based support systems have demonstrated encouraging results in numerous clinical appli...
International audienceDeep neural networks are powerful predictors for a variety of tasks. However, ...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Considering uncertainty estimation of modern neural networks (NNs) is one of the most important ste...
International audienceClassical problems in computational physics such as data-driven forecasting an...
Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts with an ...
Since convolutional neural networks (CNNs) achieved top performance on the ImageNet task in 2012, de...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...
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 ...
Deep neural networks have amply demonstrated their prowess but estimating the reliability of their p...
Deep learning-based support systems have demonstrated encouraging results in numerous clinical appli...
International audienceDeep neural networks are powerful predictors for a variety of tasks. However, ...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Considering uncertainty estimation of modern neural networks (NNs) is one of the most important ste...
International audienceClassical problems in computational physics such as data-driven forecasting an...
Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts with an ...
Since convolutional neural networks (CNNs) achieved top performance on the ImageNet task in 2012, de...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
International audienceEnsemble forecasting is, so far, the most successful approach to produce relev...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...