Crystal structure representations for machine learning models of formation energies
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Title
Crystal structure representations for machine learning models of formation energies
Authors
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Journal
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY
Volume 115, Issue 16, Pages 1094-1101
Publisher
Wiley
Online
2015-04-20
DOI
10.1002/qua.24917
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