Abstract
In recent years, the prediction of quantum mechanical observables with machine learning methods has become increasingly popular. Message-passing neural networks (MPNNs) solve this task by constructing atomic representations, from which the properties of interest are predicted. Here, we introduce a method to automatically identify chemical moieties (molecular building blocks) from such representations, enabling a variety of applications beyond property prediction, which otherwise rely on expert knowledge. The required representation can either be provided by a pretrained MPNN, or be learned from scratch using only structural information. Beyond the data-driven design of molecular fingerprints, the versatility of our approach is demonstrated by enabling the selection of representative entries in chemical databases, the automatic construction of coarse-grained force fields, as well as the identification of reaction coordinates.
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CITATION STYLE
Lederer, J., Gastegger, M., Schütt, K. T., Kampffmeyer, M., Müller, K. R., & Unke, O. T. (2023). Automatic identification of chemical moieties. Physical Chemistry Chemical Physics, 25(38), 26370–26379. https://doi.org/10.1039/d3cp03845a
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