Nature Communications (Sep 2020)
Identifying domains of applicability of machine learning models for materials science
Abstract
Machine learning models insufficient for certain screening tasks can still provide valuable predictions in specific sub-domains of the considered materials. Here, the authors introduce a diagnostic tool to detect regions of low expected model error as demonstrated for the case of transparent conducting oxides.