Model-free quantification of completeness, uncertainties, and outliers in atomistic machine learning using information theory
Daniel Schwalbe‐Koda(University of California, Los Angeles), Vincenzo Lordi(Lawrence Livermore National Laboratory), Sébastien Hamel(Lawrence Livermore National Laboratory), Babak Sadigh(Lawrence Livermore National Laboratory), Fei Zhou
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