International audienceIn this paper, we tackle the challenge of jointly quantifying in-distribution and out-of-distribution (OOD) uncertainties. We introduce KLoS, a KL-divergence measure defined on the classprobability simplex. By leveraging the secondorder uncertainty representation provided by evidential models, KLoS captures more than existing first-order uncertainty measures such as predictive entropy. We design an auxiliary neural network, KLoSNet, to learn a refined measure directly aligned with the evidential training objective. Experiments show that KLoSNet acts as a class-wise density estimator and outperforms current uncertainty measures in the realistic context where no OOD data is available during training. We also report compa...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
POCI-01-0247-FEDER-033479Uncertainty is ubiquitous and happens in every single prediction of Machine...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
International audienceIn this paper, we tackle the challenge of jointly quantifying in-distribution ...
Traditional deep neural networks (NNs) have significantly contributed to the state-of-the-art perfor...
Deep neural networks (DNNs) have been widely used for intelligent fault diagnosis under the closed w...
This work reveals an evidential signal that emerges from the uncertainty value in Evidential Deep Le...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Accurate and efficient uncertainty estimation is crucial to build reliable Machine Learning (ML) mod...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
Addressing noise and uncertainty in training data is an important issue in inductive learning. Indu...
The work presented in this thesis addresses the problem of Out-of-Distribution (OOD) detection in de...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
POCI-01-0247-FEDER-033479Uncertainty is ubiquitous and happens in every single prediction of Machine...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
International audienceIn this paper, we tackle the challenge of jointly quantifying in-distribution ...
Traditional deep neural networks (NNs) have significantly contributed to the state-of-the-art perfor...
Deep neural networks (DNNs) have been widely used for intelligent fault diagnosis under the closed w...
This work reveals an evidential signal that emerges from the uncertainty value in Evidential Deep Le...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Accurate and efficient uncertainty estimation is crucial to build reliable Machine Learning (ML) mod...
Uncertainty estimation (UE) techniques -- such as the Gaussian process (GP), Bayesian neural network...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
Addressing noise and uncertainty in training data is an important issue in inductive learning. Indu...
The work presented in this thesis addresses the problem of Out-of-Distribution (OOD) detection in de...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
POCI-01-0247-FEDER-033479Uncertainty is ubiquitous and happens in every single prediction of Machine...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...