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Keywords: Structure prediction
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Journal Articles
Structure prediction of multi-principal element alloys using ensemble learning
Available to Purchase
Journal:
Engineering Computations
Engineering Computations (2020) 37 (3): 1003–1022.
Published: 28 November 2019
... structure using an ensemble-based machine-learning algorithm known as random-forest algorithm. Findings The model developed by implementing random-forest algorithm has resulted in an accuracy of 91 per cent for phase prediction and 93 per cent for crystal structure prediction for single-phase solid...
