2023
DOI: 10.26434/chemrxiv-2023-t7r63
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Interpreting Chemisorption Strength with AutoML-based Feature Deletion Experiments

Zhuo Li,
Changquan Zhao,
Haikun Wang
et al.

Abstract: The chemisorption energy of reactants on a catalyst surface, E_ads, is among the most informative characters of understanding and pinpointing the optimal catalyst. The intrinsic complexity of catalyst surfaces and chemisorption reactions presents significant difficulties in identifying the pivotal physical quantities determining Eads. In response to this, the study proposes a novel methodology, the feature deletion experiment, based on Automatic Machine Learning (AutoML) for knowledge extraction from a high-th… Show more

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