Abstract
Graph neural networks (GNNs) have received intense interest as a rapidly expanding class of
machine learning models remarkably well-suited for materials applications. To date, a number of
successful GNNs have been proposed and demonstrated for systems ranging from crystal stability
to electronic property prediction and to surface chemistry and heterogeneous catalysis. However,
a consistent benchmark of these models remains lacking, hindering the development and consistent
evaluation of new models in the materials field. Here, we present a workflow and testing platform,
MatDeepLearn, for quickly and reproducibly assessing and comparing GNNs and other machine
learning models. We use this platform to optimize and evaluate a selection of top performing
GNNs on several representative datasets in computational materials chemistry. From our
investigations we note the importance of hyperparameter selection and find roughly similar
performances for the top models once optimized. We identify several strengths in GNNs over
conventional models in cases with compositionally diverse datasets and in its overall flexibility
with respect to inputs, due to learned rather than defined representations. Meanwhile several
weaknesses of GNNs are also observed including high data requirements, and suggestions for
further improvement for applications in materials chemistry are proposed.
Supplementary materials
Title
MatDeepLearn SI
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Title
MatDeepLearn SI
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Title
MatDeepLearn rev
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