Highly accurate machine learning prediction of crystal point groups for ternary materials from chemical formula

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Abstract

One of the most challenging problems in condensed matter physics is to predict crystal structure just from the chemical formula of the material. In this work, we present a robust machine learning (ML) predictor for the crystal point group of ternary materials (AlBmCn) - as first step to predict the structure - with very small set of ionic and positional fundamental features. From ML perspective, the problem is strenuous due to multi-labelity, multi-class, and data imbalance. The resulted prediction is very reliable as high balanced accuracies are obtained by different ML methods. Many similarity-based approaches resulted in a balanced accuracy above 95% indicating that the physics is well captured by the reduced set of features; namely, stoichiometry, ionic radii, ionization energies, and oxidation states for each of the three elements in the ternary compound. The accuracy is not limited by the approach; but rather by the limited data points and we should expect higher accuracy prediction by having more reliable data.

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Alsaui, A., Alqahtani, S. M., Mumtaz, F., Ibrahim, A. G., Mohammed, A., Muqaibel, A. H., … Alharbi, F. H. (2022). Highly accurate machine learning prediction of crystal point groups for ternary materials from chemical formula. Scientific Reports, 12(1). https://doi.org/10.1038/s41598-022-05642-9

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