Multi-Label Classification Models for the Prediction of Cross-Coupling Reaction Conditions

15 October 2020, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Machine-learned ranking models have been developed for the prediction of substrate-specific cross-coupling reaction conditions. Datasets of published reactions were curated for Suzuki, Negishi, and C–N couplings, as well as Pauson–Khand reactions. String, descriptor, and graph encodings were tested as input representations, and models were trained to predict the set of conditions used in a reaction as a binary vector. Unique reagent dictionaries categorized by expert-crafted reaction roles were constructed for each dataset, leading to context-aware predictions. We find that relational graph convolutional networks and gradient-boosting machines are very effective for this learning task, and we disclose a novel reaction-level graph-attention operation in the top-performing model.

Keywords

machine learning
graph neural network
graph attention
gradient-boosting machines
reaction condition prediction
cross-coupling
predictive modeling
molecular machine learning

Supplementary materials

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Title
2020-10-13 ChemRxiv SI
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