Applying a machine learning model for decision-making in the real world requires to distinguish what the model knows from what it does not. A critical factor in assessing the knowledge of a model is to quantify its predictive uncertainty. Predictive uncertainty is commonly measured by the entropy of the Bayesian model average (BMA) predictive distribution. Yet, the properness of this current measure of predictive uncertainty was recently questioned. We provide new insights regarding those limitations. Our analyses show that the current measure erroneously assumes that the BMA predictive distribution is equivalent to the predictive distribution of the true model that generated the dataset. Consequently, we introduce a theoretically grounded ...
Estimating the uncertainty in deep neural network predictions is crucial for many real-world applica...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
This short note is a critical discussion of the quantification of aleatoric and epistemic uncertaint...
In order to trust the predictions of a machine learning algorithm, it is necessary to understand the...
As neural networks become more popular, the need for accompanying uncertainty estimates increases. T...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts with an ...
Both uncertainty estimation and interpretability are important factors for trustworthy machine learn...
The aim of this project is to improve human decision-making using explainability; specifically, how ...
Various strategies for active learning have been proposed in the machine learning literature. In unc...
This Chapter presents the PASCAL Evaluating Predictive Uncertainty Challenge, introduces the contrib...
Predictions and forecasts of machine learning models should take the form of probability distributio...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Estimating the uncertainty in deep neural network predictions is crucial for many real-world applica...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
This short note is a critical discussion of the quantification of aleatoric and epistemic uncertaint...
In order to trust the predictions of a machine learning algorithm, it is necessary to understand the...
As neural networks become more popular, the need for accompanying uncertainty estimates increases. T...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts with an ...
Both uncertainty estimation and interpretability are important factors for trustworthy machine learn...
The aim of this project is to improve human decision-making using explainability; specifically, how ...
Various strategies for active learning have been proposed in the machine learning literature. In unc...
This Chapter presents the PASCAL Evaluating Predictive Uncertainty Challenge, introduces the contrib...
Predictions and forecasts of machine learning models should take the form of probability distributio...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Estimating the uncertainty in deep neural network predictions is crucial for many real-world applica...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...