2021
DOI: 10.1039/d0sc04823b
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Regio-selectivity prediction with a machine-learned reaction representation and on-the-fly quantum mechanical descriptors

Abstract: Integrating feature learning and on-the-fly feather engineering enables fast and accurate reacitvity predictions using large or small dataset.

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Cited by 100 publications
(149 citation statements)
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References 69 publications
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“…random forest, have an advantage in the low data regime. As shown by a previous report 95 , it is likely that GNNs can be further enhanced by relevant descriptors. Thus, inclusion of quantum chemical descriptors into DeepReac+ may be a future solution.…”
Section: Identification Of the Optimal Reaction Conditions And Starting Materials By Deepreac+mentioning
confidence: 64%
“…random forest, have an advantage in the low data regime. As shown by a previous report 95 , it is likely that GNNs can be further enhanced by relevant descriptors. Thus, inclusion of quantum chemical descriptors into DeepReac+ may be a future solution.…”
Section: Identification Of the Optimal Reaction Conditions And Starting Materials By Deepreac+mentioning
confidence: 64%
“…These GNN-derived atomic descriptors impose low computational cost such that we anticipate future utility in related prediction tasks of organic reactivity and selectivity, for example in combination with other machine-learned representations. 87 …”
Section: Application As Atomic Descriptors In Selectivity Predictionmentioning
confidence: 99%
“…[60] A reactivity descriptor database based on QM calculations of 130,000 organic molecules was used to predict regio-selectivity for three general types of substitution reactions. [61] Trends surrounding the thermodynamics of the hydroformylation reaction catalyzed by group 9 metals bearing phosphine ligands have been analyzed using a data-driven inspired workflow (data-powered volcano plots). The total data set used consisted of 1510 catalytic cycles derived from DFT computations and 491 catalytic cycles derived from machine learned profiles.…”
Section: Designing Catalysts and Discovering New Reactionsmentioning
confidence: 99%
“…Different ML algorithms were used for different purposes, including neural networks for accuracy, Gaussian processes for transferability, and Gradient boosting for explainability [60] . A reactivity descriptor database based on QM calculations of 130,000 organic molecules was used to predict regio‐selectivity for three general types of substitution reactions [61] . Trends surrounding the thermodynamics of the hydroformylation reaction catalyzed by group 9 metals bearing phosphine ligands have been analyzed using a data‐driven inspired workflow (data‐powered volcano plots).…”
Section: Designing Catalysts and Discovering New Reactionsmentioning
confidence: 99%