Despite their incredible performance, it is well reported that deep neural networks tend to be overoptimistic about their prediction confidence. Finding effective and efficient calibration methods for neural networks is therefore an important endeavour towards better uncertainty quantification in deep learning. In this manuscript, we introduce a novel calibration technique named expectation consistency (EC), consisting of a post-training rescaling of the last layer weights by enforcing that the average validation confidence coincides with the average proportion of correct labels. First, we show that the EC method achieves similar calibration performance to temperature scaling (TS) across different neural network architectures and data sets,...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
Calibrating deep learning models to yield uncertainty-aware predictions is crucial as deep neural ne...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
We propose an algorithm combining calibrated prediction and generalization bounds from learning theo...
Deep neural networks have been shown to be highly miscalibrated. often they tend to be overconfident...
Calibration of neural networks is a topical problem that is becoming more and more important as neur...
Deep neural networks (DNNs) have made great strides in pushing the state-of-the-art in several chall...
With model trustworthiness being crucial for sensitive real-world applications, practitioners are pu...
Calibrating deep neural models plays an important role in building reliable, robust AI systems in sa...
Uncertainty quantification (UQ) is important for reliability assessment and enhancement of machine l...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Model calibration, which is concerned with how frequently the model predicts correctly, not only pla...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
Calibrating deep learning models to yield uncertainty-aware predictions is crucial as deep neural ne...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
We propose an algorithm combining calibrated prediction and generalization bounds from learning theo...
Deep neural networks have been shown to be highly miscalibrated. often they tend to be overconfident...
Calibration of neural networks is a topical problem that is becoming more and more important as neur...
Deep neural networks (DNNs) have made great strides in pushing the state-of-the-art in several chall...
With model trustworthiness being crucial for sensitive real-world applications, practitioners are pu...
Calibrating deep neural models plays an important role in building reliable, robust AI systems in sa...
Uncertainty quantification (UQ) is important for reliability assessment and enhancement of machine l...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Model calibration, which is concerned with how frequently the model predicts correctly, not only pla...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
Calibrating deep learning models to yield uncertainty-aware predictions is crucial as deep neural ne...