Crysformer: An attention-based graph neural network for properties prediction of crystals

We present a novel approach for the prediction of crystal material properties that is distinct from the computationally complex and expensive density functional theory (DFT)-based calculations. Instead, we utilize an attention-based graph neural network that yields high-accuracy predictions. Our app...

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Veröffentlicht in:Chinese physics B 2023-09, Vol.32 (9), p.90703-22
Hauptverfasser: Wang, Tian, Chen, Jiahui, Teng, Jing, Shi, Jingang, Zeng, Xinhua, Snoussi, Hichem
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Sprache:eng
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Zusammenfassung:We present a novel approach for the prediction of crystal material properties that is distinct from the computationally complex and expensive density functional theory (DFT)-based calculations. Instead, we utilize an attention-based graph neural network that yields high-accuracy predictions. Our approach employs two attention mechanisms that allow for message passing on the crystal graphs, which in turn enable the model to selectively attend to pertinent atoms and their local environments, thereby improving performance. We conduct comprehensive experiments to validate our approach, which demonstrates that our method surpasses existing methods in terms of predictive accuracy. Our results suggest that deep learning, particularly attention-based networks, holds significant promise for predicting crystal material properties, with implications for material discovery and the refined intelligent systems.
ISSN:1674-1056
2058-3834
DOI:10.1088/1674-1056/ace247