Uncertainty estimation is essential to make neural networks trustworthy in real-world applications. Extensive research efforts have been made to quantify and reduce predictive uncertainty. However, most existing works are designed for unimodal data, whereas multi-view uncertainty estimation has not been sufficiently investigated. Therefore, we propose a new multi-view classification framework for better uncertainty estimation and out-of-domain sample detection, where we associate each view with an uncertainty-aware classifier and combine the predictions of all the views in a principled way. The experimental results with real-world datasets demonstrate that our proposed approach is an accurate, reliable, and well-calibrated classifier, which...
It is known that neural networks have the problem of being over-confident when directly using the ou...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Learning from different data views by exploring the underlying complementary information among them ...
This work focuses on comparing three widely used methods for improving uncertainty estimations: Deep...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
Traditional deep neural networks (NNs) have significantly contributed to the state-of-the-art perfor...
With the huge successes of deep learning and its application in critical areas such as medical diagn...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Existing methods for estimating uncertainty in deep learning tend to require multiple forward passes...
Despite the popularity of Convolutional Neural Networks (CNN), the problem of uncertainty quantifica...
Since their inception, machine learning methods have proven useful, and their usability continues to...
Deep Learning models often exhibit undue confidence when encountering out-of-distribution (OOD) inpu...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
It is known that neural networks have the problem of being over-confident when directly using the ou...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Learning from different data views by exploring the underlying complementary information among them ...
This work focuses on comparing three widely used methods for improving uncertainty estimations: Deep...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
Multiple classifier systems (MCS) unite the answers of separately-trained powerful base-classifiers ...
Traditional deep neural networks (NNs) have significantly contributed to the state-of-the-art perfor...
With the huge successes of deep learning and its application in critical areas such as medical diagn...
Estimating how uncertain an AI system is in its predictions is important to improve the safety of su...
Existing methods for estimating uncertainty in deep learning tend to require multiple forward passes...
Despite the popularity of Convolutional Neural Networks (CNN), the problem of uncertainty quantifica...
Since their inception, machine learning methods have proven useful, and their usability continues to...
Deep Learning models often exhibit undue confidence when encountering out-of-distribution (OOD) inpu...
Machine learning model deployment in clinical practice demands real-time risk assessment to identify...
It is known that neural networks have the problem of being over-confident when directly using the ou...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...