Reliable uncertainty from deterministic single-forward pass models is sought after because conventional methods of uncertainty quantification are computationally expensive. We take …
Being able to quantify uncertainty when comparing a theoretical or computational model to observations is critical to conducting a sound scientific investigation. With the rise of data …
There has been significant research done on developing methods for improving robustness to distributional shift and uncertainty estimation. In contrast, only limited work has examined …
Intelligence relies on an agent's knowledge of what it does not know. This capability can be assessed based on the quality of joint predictions of labels across multiple inputs. In …
We show that a single softmax neural net with minimal changes can beat the uncertainty predictions of Deep Ensembles and other more complex single-forward-pass uncertainty …
Anomaly detection can be conceived either through generative modelling of regular training data or by discriminating with respect to negative training data. These two approaches …
SW Ober, CE Rasmussen… - Uncertainty in Artificial …, 2021 - proceedings.mlr.press
Deep kernel learning and related techniques promise to combine the representational power of neural networks with the reliable uncertainty estimates of Gaussian processes. One …
Epistemic Uncertainty is a measure of the lack of knowledge of a learner which diminishes with more evidence. While existing work focuses on using the variance of the Bayesian …
W He, Z Jiang, T Xiao, Z Xu, Y Li - arXiv preprint arXiv:2302.13425, 2023 - jiangteam.org
A Survey on Uncertainty Quantification Methods for Deep Neural Networks: An Uncertainty Source's Perspective Page 1 A Survey on Uncertainty Quantification Methods for Deep Neural …