Accurate and efficient uncertainty estimation is crucial to build reliable Machine Learning (ML) models capable to provide calibrated uncertainty estimates, generalize and detect Out-Of Distribution (OOD) datasets. To this end, Deterministic Uncertainty Methods (DUMs) is a promising model family capable to perform uncertainty estimation in a single forward pass. This work investigates important design choices in DUMs: (1) we show that training schemes decoupling the core architecture and the uncertainty head schemes can significantly improve uncertainty performances. (2) we demonstrate that the core architecture expressiveness is crucial for uncertainty performance and that additional architecture constraints to avoid feature collapse can d...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...
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...
It is known that neural networks have the problem of being over-confident when directly using the ou...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
Uncertainty plays a crucial role in the machine learning field. Both model trustworthiness and perfo...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
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...
International audienceIn this paper, we tackle the challenge of jointly quantifying in-distribution ...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...
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...
It is known that neural networks have the problem of being over-confident when directly using the ou...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
Uncertainty plays a crucial role in the machine learning field. Both model trustworthiness and perfo...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
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...
International audienceIn this paper, we tackle the challenge of jointly quantifying in-distribution ...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
Designing uncertainty-aware deep learning models which are able to provide reasonable uncertainties ...