Explainable machine learning in materials science

被引:0
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作者
Xiaoting Zhong
Brian Gallagher
Shusen Liu
Bhavya Kailkhura
Anna Hiszpanski
T. Yong-Jin Han
机构
[1] Materials Science Division,
[2] Lawrence Livermore National Laboratory,undefined
[3] Center for Applied Scientific Computing,undefined
[4] Lawrence Livermore National Laboratory,undefined
来源
npj Computational Materials | / 8卷
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摘要
Machine learning models are increasingly used in materials studies because of their exceptional accuracy. However, the most accurate machine learning models are usually difficult to explain. Remedies to this problem lie in explainable artificial intelligence (XAI), an emerging research field that addresses the explainability of complicated machine learning models like deep neural networks (DNNs). This article attempts to provide an entry point to XAI for materials scientists. Concepts are defined to clarify what explain means in the context of materials science. Example works are reviewed to show how XAI helps materials science research. Challenges and opportunities are also discussed.
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