Machine Learning Guided Prediction of Superhard Materials Based on Compositional Features
Chunghee Nam
Korean J. Met. Mater.. 2022;60(8):619-627.   Published online 2022 Jul 12     DOI: https://doi.org/10.3365/KJMM.2022.60.8.619
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