Nature Communications (Sep 2021)
Infusing theory into deep learning for interpretable reactivity prediction
Abstract
Machine learning faces challenges in catalyst design due to its black-box nature. Here, the authors develop a theory-infused neural network approach that integrates deep learning algorithms with the well-established d-band theory of chemisorption for reactivity prediction of transition-metal surfaces.