2019
DOI: 10.26434/chemrxiv.7905017
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Solving the Colouring Problem in Half-Heusler Structures: Machine-Learning Predictions and Experimental Validation

Abstract: The site preferences within the structures of half-Heusler compounds have been evaluated through a machine-learning approach. A support-vector machine algorithm was applied to develop a model which was trained on 179 experimentally reported structures and 23 descriptors based solely on the chemical composition. The model gave excellent performance, with sensitivity of 93%, selectivity of 96%, and accuracy of 95%. As an illustration of data sanitization, two compounds (GdPtSb, HoPdBi) flagged by the model to… Show more

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