Uncertainty Qualification for Deep Learning-Based Elementary Reaction Property Prediction
Yan Liu,
Yiming Mo,
Youwei Cheng
Abstract:The prediction of the thermodynamic and kinetic properties of elementary reactions has shown rapid improvement due to the implementation of deep learning (DL) methods. While various studies have reported the success in predicting reaction properties, the quantification of prediction uncertainty has seldom been investigated, thus compromising the confidence in using these predicted properties in practical applications. Here, we integrated graph convolutional neural networks (GCNN) with three uncertainty predict… Show more
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