2020
DOI: 10.48550/arxiv.2012.09589
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Using the Gini coefficient to characterize the shape of computational chemistry error distributions

Pascal Pernot,
Andreas Savin

Abstract: The distribution of errors is a central object in the assesment and benchmarking of computational chemistry methods. The popular and often blind use of the mean unsigned error as a benchmarking statistic leads to ignore distributions features that impact the reliability of the tested methods. We explore how the Gini coefficient offers a global representation of the errors distribution, but, except for extreme values, does not enable an unambiguous diagnostic. We propose to relieve the ambiguity by applying the… Show more

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