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タイトル: Machine learning with systematic density-functional theory calculations: Application to melting temperatures of single- and binary-component solids
著者: Seko, Atsuto  kyouindb  KAKEN_id  orcid https://orcid.org/0000-0002-2473-3837 (unconfirmed)
Maekawa, Tomoya
Tsuda, Koji
Tanaka, Isao  kyouindb  KAKEN_id  orcid https://orcid.org/0000-0002-4616-118X (unconfirmed)
著者名の別形: 世古, 敦人
発行日: Feb-2014
出版者: American Physical Society
誌名: Physical Review B
巻: 89
号: 5
論文番号: 054303
抄録: A combination of systematic density-functional theory (DFT) calculations and machine learning techniques has a wide range of potential applications. This study presents an application of the combination of systematic DFT calculations and regression techniques to the prediction of the melting temperature for single and binary compounds. Here we adopt the ordinary least-squares regression, partial least-squares regression, support vector regression, and Gaussian process regression. Among the four kinds of regression techniques, SVR provides the best prediction. The inclusion of physical properties computed by the DFT calculation to a set of predictor variables makes the prediction better. In addition, limitation of the predictive power is shown when extrapolation from the training dataset is required. Finally, a simulation to find the highest melting temperature toward the efficient materials design using kriging is demonstrated. The kriging design finds the compound with the highest melting temperature much faster than random designs. This result may stimulate the application of kriging to efficient materials design for a broad range of applications.
著作権等: ©2014 American Physical Society
URI: http://hdl.handle.net/2433/187034
DOI(出版社版): 10.1103/PhysRevB.89.054303
出現コレクション:学術雑誌掲載論文等

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