Data quantity governance for machine learning in materials science
Yue Liu(Shanghai University of Engineering Science), Siqi Shi(Shanghai University), Maxim Avdeev(The University of Sydney), Xinxin Zou(Shanghai University of Engineering Science), Dahui Liu(Shanghai University of Engineering Science), Zhengwei Yang(Shanghai University of Engineering Science), Shuchang Ma(Shanghai University of Engineering Science)
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