npj Computational Materials (Mar 2022)

CrysXPP: An explainable property predictor for crystalline materials

  • Kishalay Das,
  • Bidisha Samanta,
  • Pawan Goyal,
  • Seung-Cheol Lee,
  • Satadeep Bhattacharjee,
  • Niloy Ganguly

DOI
https://doi.org/10.1038/s41524-022-00716-8
Journal volume & issue
Vol. 8, no. 1
pp. 1 – 11

Abstract

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Abstract We present a deep-learning framework, CrysXPP, to allow rapid and accurate prediction of electronic, magnetic, and elastic properties of a wide range of materials. CrysXPP lowers the need for large property tagged datasets by intelligently designing an autoencoder, CrysAE. The important structural and chemical properties captured by CrysAE from a large amount of available crystal graphs data helped in achieving low prediction errors. Moreover, we design a feature selector that helps to interpret the model’s prediction. Most notably, when given a small amount of experimental data, CrysXPP is consistently able to outperform conventional DFT. A detailed ablation study establishes the importance of different design steps. We release the large pre-trained model CrysAE. We believe by fine-tuning the model with a small amount of property-tagged data, researchers can achieve superior performance on various applications with a restricted data source.