作者
Albert Zhu, Simon Batzner, Albert Musaelian, Boris Kozinsky
发表日期
2023/4/28
期刊
The Journal of Chemical Physics
卷号
158
期号
16
出版商
AIP Publishing
简介
Deep learning has emerged as a promising paradigm to give access to highly accurate predictions of molecular and material properties. A common short-coming shared by current approaches, however, is that neural networks only give point estimates of their predictions and do not come with predictive uncertainties associated with these estimates. Existing uncertainty quantification efforts have primarily leveraged the standard deviation of predictions across an ensemble of independently trained neural networks. This incurs a large computational overhead in both training and prediction, resulting in order-of-magnitude more expensive predictions. Here, we propose a method to estimate the predictive uncertainty based on a single neural network without the need for an ensemble. This allows us to obtain uncertainty estimates with virtually no additional computational overhead over standard training and inference …
引用总数
学术搜索中的文章
A Zhu, S Batzner, A Musaelian, B Kozinsky - The Journal of Chemical Physics, 2023