The estimation of chemical reaction properties such as activation energies, rates, or yields is a central topic of computational chemistry. In contrast to molecular properties, where machine learning approaches such as graph convolutional neural networks (GCNNs) have excelled for a wide variety of tasks, no general and transferable adaptations of GCNNs for reactions have been developed yet. We therefore combined a popular cheminformatics reaction representation, the so-called condensed graph of reaction (CGR), with a recent GCNN architecture to arrive at a versatile, robust, and compact deep learning model. The CGR is a superposition of the reactant and product graphs of a chemical reaction and thus an ideal input for graph-based machine le...
Being able to predict the course of arbitrary chemical reactions is essential to the theory and appl...
Knowledge in the chemical domain is often disseminated graphically via means of chemical reaction s...
Graph-based descriptors, such as bond-order matrices and adjacency matrices, offer a simple and comp...
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...
Quantitative predictions of reaction properties, such as activation energy, have been limited due to...
We present a systematic investigation using graph neural networks (GNNs) to model organic chemical r...
Machine learning (ML) methods have great potential to transform chemical discovery by accelerating t...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
We address a fundamental problem in chemistry known as chemical reaction product prediction. Our mai...
Achieving human-level performance at predicting chemical reactions remains an open prob- lem with br...
Predicting products of organic chemical reactions is useful in chemical sciences, especially when on...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
Abstract: Chemical compound space refers to the vast set of all possible chemical compounds, estimat...
Being able to predict the course of arbitrary chemical reactions is essential to the theory and appl...
Knowledge in the chemical domain is often disseminated graphically via means of chemical reaction s...
Graph-based descriptors, such as bond-order matrices and adjacency matrices, offer a simple and comp...
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...
Quantitative predictions of reaction properties, such as activation energy, have been limited due to...
We present a systematic investigation using graph neural networks (GNNs) to model organic chemical r...
Machine learning (ML) methods have great potential to transform chemical discovery by accelerating t...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
We address a fundamental problem in chemistry known as chemical reaction product prediction. Our mai...
Achieving human-level performance at predicting chemical reactions remains an open prob- lem with br...
Predicting products of organic chemical reactions is useful in chemical sciences, especially when on...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
Abstract: Chemical compound space refers to the vast set of all possible chemical compounds, estimat...
Being able to predict the course of arbitrary chemical reactions is essential to the theory and appl...
Knowledge in the chemical domain is often disseminated graphically via means of chemical reaction s...
Graph-based descriptors, such as bond-order matrices and adjacency matrices, offer a simple and comp...