volume 30, issue 4, P1-5 2020
DOI: 10.1109/tasc.2020.2971456
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Abstract: Much research in recent years has focused on using empirical machine learning approaches to extract useful insights on the structure-property relationships of superconductor material. Notably, these approaches are bringing extreme benefits when superconductivity data often come from costly and arduously experimental work. However, this assessment cannot be based solely on an open black-box machine learning, which is not fully interpretable, because it can be counterintuitive to understand why the model may gi…

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