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4 months ago

Neural Message Passing with Edge Updates for Predicting Properties of Molecules and Materials

Peter Bjørn Jørgensen; Karsten Wedel Jacobsen; Mikkel N. Schmidt

Neural Message Passing with Edge Updates for Predicting Properties of Molecules and Materials

Abstract

Neural message passing on molecular graphs is one of the most promising methods for predicting formation energy and other properties of molecules and materials. In this work we extend the neural message passing model with an edge update network which allows the information exchanged between atoms to depend on the hidden state of the receiving atom. We benchmark the proposed model on three publicly available datasets (QM9, The Materials Project and OQMD) and show that the proposed model yields superior prediction of formation energies and other properties on all three datasets in comparison with the best published results. Furthermore we investigate different methods for constructing the graph used to represent crystalline structures and we find that using a graph based on K-nearest neighbors achieves better prediction accuracy than using maximum distance cutoff or the Voronoi tessellation graph.

Code Repositories

nrel/m2p
Mentioned in GitHub
tisabe/jraph_mpeu
jax
Mentioned in GitHub
peterbjorgensen/msgnet
tf
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
formation-energy-on-materials-projectSchNet
MAE: 31.8
formation-energy-on-materials-projectSchNet-edge-update
MAE: 22.7
formation-energy-on-qm9SchNet
MAE: 0.314
formation-energy-on-qm9SchNet-edge-update
MAE: 0.242

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