Automated stopping criterion for spectral measurements with active learning

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作者
Tetsuro Ueno
Hideaki Ishibashi
Hideitsu Hino
Kanta Ono
机构
[1] National Institutes for Quantum and Radiological Science and Technology,Synchrotron Radiation Research Center, Kansai Photon Science Institute, Quantum Beam Science Research Directorate
[2] Kyushu Institute of Technology,Department of Human Intelligence Systems, Graduate School of Life Science and Systems Engineering
[3] Research Organization of Information and Systems,The Institute of Statistical Mathematics
[4] Osaka University,Department of Applied Physics, Graduate School of Engineering
[5] High Energy Accelerator Research Organization,Center for Integrative Quantum Beam Science, Institute of Materials Structure Science
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摘要
The automated stopping of a spectral measurement with active learning is proposed. The optimal stopping of the measurement is realised with a stopping criterion based on the upper bound of the posterior average of the generalisation error of the Gaussian process regression. It is revealed that the automated stopping criterion of the spectral measurement gives an approximated X-ray absorption spectrum with sufficient accuracy and reduced data size. The proposed method is not only a proof-of-concept of the optimal stopping problem in active learning but also the key to enhancing the efficiency of spectral measurements for high-throughput experiments in the era of materials informatics.
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