Predicting Many Crystal Properties via an Adaptive Transformer-based Framework
- URL: http://arxiv.org/abs/2405.18944v2
- Date: Fri, 13 Dec 2024 06:23:03 GMT
- Title: Predicting Many Crystal Properties via an Adaptive Transformer-based Framework
- Authors: Haosheng Xu, Dongheng Qian, Jing Wang,
- Abstract summary: We introduce CrystalBERT, an adaptable transformer-based framework integrating space group, elemental, and unit cell information.
By incorporating these features, we achieve 91% accuracy in topological classification, surpassing prior studies and identifying previously misclassified materials.
- Score: 2.7892599615881144
- License:
- Abstract: Machine learning has revolutionized many fields, including materials science. However, predicting properties of crystalline materials using machine learning faces challenges in input encoding, output versatility, and interpretability. We introduce CrystalBERT, an adaptable transformer-based framework integrating space group, elemental, and unit cell information. This novel structure can seamlessly combine diverse features and accurately predict various physical properties, including topological properties, superconducting transition temperatures, dielectric constants, and more. CrystalBERT provides insightful interpretations of features influencing target properties. Our results indicate that space group and elemental information are crucial for predicting topological and superconducting properties, underscoring their intricate nature. By incorporating these features, we achieve 91\% accuracy in topological classification, surpassing prior studies and identifying previously misclassified materials. This research demonstrates that integrating diverse material information enhances the prediction of complex material properties, paving the way for more accurate and interpretable machine learning models in materials science.
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