We present a systematic investigation using graph neural networks (GNNs) to model organic chemical reactions. To do so, we prepared a dataset collection of four ubiquitous reactions from the organic chemistry literature. We evaluate seven different GNN architectures for classification tasks pertaining to the identification of experimental reagents and conditions. We find that models are able to identify specific graph features that affect reaction conditions and lead to accurate predictions. The results herein show great promise in advancing molecular machine learning
Machine learning ML approaches have demonstrated the ability to predict molecular spectra at a fra...
The ability to estimate the acidity of C-H groups within organic molecules in non-aqueous solvents i...
The field of chemical graph theory utilizes simple graphs as models of molecules. These models are c...
We present a systematic investigation using graph neural networks (GNNs) to model organic chemical r...
We present a supervised learning approach to predict the products of organic reactions given their r...
© 2019 The Royal Society of Chemistry. We present a supervised learning approach to predict the prod...
The estimation of chemical reaction properties such as activation energies, rates, or yields is a ce...
Reaction prediction remains one of the major challenges for organic chemistry and is a prerequisite ...
We address a fundamental problem in chemistry known as chemical reaction product prediction. Our mai...
Reaction prediction remains one of the major challenges for organic chemistry and is a prerequisite ...
The quantitative description between chemical reaction rates and nucleophilicity parameters plays a ...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Machine learning (ML) approaches have demonstrated the ability to predict molecular spectra at a fra...
© 2019 American Chemical Society. Advancements in neural machinery have led to a wide range of algor...
Predicting products of organic chemical reactions is useful in chemical sciences, especially when on...
Machine learning ML approaches have demonstrated the ability to predict molecular spectra at a fra...
The ability to estimate the acidity of C-H groups within organic molecules in non-aqueous solvents i...
The field of chemical graph theory utilizes simple graphs as models of molecules. These models are c...
We present a systematic investigation using graph neural networks (GNNs) to model organic chemical r...
We present a supervised learning approach to predict the products of organic reactions given their r...
© 2019 The Royal Society of Chemistry. We present a supervised learning approach to predict the prod...
The estimation of chemical reaction properties such as activation energies, rates, or yields is a ce...
Reaction prediction remains one of the major challenges for organic chemistry and is a prerequisite ...
We address a fundamental problem in chemistry known as chemical reaction product prediction. Our mai...
Reaction prediction remains one of the major challenges for organic chemistry and is a prerequisite ...
The quantitative description between chemical reaction rates and nucleophilicity parameters plays a ...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Machine learning (ML) approaches have demonstrated the ability to predict molecular spectra at a fra...
© 2019 American Chemical Society. Advancements in neural machinery have led to a wide range of algor...
Predicting products of organic chemical reactions is useful in chemical sciences, especially when on...
Machine learning ML approaches have demonstrated the ability to predict molecular spectra at a fra...
The ability to estimate the acidity of C-H groups within organic molecules in non-aqueous solvents i...
The field of chemical graph theory utilizes simple graphs as models of molecules. These models are c...