It is now well known that neural networks can be wrong with high confidence in their predictions, leading to poor calibration. The most common post-hoc approach to compensate for this is to perform temperature scaling, which adjusts the confidences of the predictions on any input by scaling the logits by a fixed value. Whilst this approach typically improves the average calibration across the whole test dataset, this improvement typically reduces the individual confidences of the predictions irrespective of whether the classification of a given input is correct or incorrect. With this insight, we base our method on the observation that different samples contribute to the calibration error by varying amounts, with some needing to increase th...
International audienceUnlike the traditional subgrid scale parameterizations used in climate models,...
We propose an algorithm combining calibrated prediction and generalization bounds from learning theo...
Neural networks have been widely studied and used in recent years due to its highclassification accu...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
Despite their incredible performance, it is well reported that deep neural networks tend to be overo...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
We consider calibration of convolutional classifiers for diagnostic decision making. Clinical decisi...
As deep learning classifiers become ever more widely deployed for medical image analysis tasks, issu...
The past years have witnessed a considerable increase in research efforts put into neural network-as...
We explore calibration properties at various precisions for three architectures: ShuffleNetv2, Ghost...
Miscalibration -- a mismatch between a model's confidence and its correctness -- of Deep Neural Netw...
Recent work has demonstrated that pretrained transformers are overconfident in text classification t...
Model calibration aims to adjust (calibrate) models' confidence so that they match expected accuracy...
Calibration of neural networks is a topical problem that is becoming more and more important as neur...
International audienceUnlike the traditional subgrid scale parameterizations used in climate models,...
We propose an algorithm combining calibrated prediction and generalization bounds from learning theo...
Neural networks have been widely studied and used in recent years due to its highclassification accu...
It is now well known that neural networks can be wrong with high confidence in their predictions, le...
Despite their incredible performance, it is well reported that deep neural networks tend to be overo...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
We consider calibration of convolutional classifiers for diagnostic decision making. Clinical decisi...
As deep learning classifiers become ever more widely deployed for medical image analysis tasks, issu...
The past years have witnessed a considerable increase in research efforts put into neural network-as...
We explore calibration properties at various precisions for three architectures: ShuffleNetv2, Ghost...
Miscalibration -- a mismatch between a model's confidence and its correctness -- of Deep Neural Netw...
Recent work has demonstrated that pretrained transformers are overconfident in text classification t...
Model calibration aims to adjust (calibrate) models' confidence so that they match expected accuracy...
Calibration of neural networks is a topical problem that is becoming more and more important as neur...
International audienceUnlike the traditional subgrid scale parameterizations used in climate models,...
We propose an algorithm combining calibrated prediction and generalization bounds from learning theo...
Neural networks have been widely studied and used in recent years due to its highclassification accu...