2023
DOI: 10.26434/chemrxiv-2023-pmrfw-v2
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Outlier-Based Domain of Applicability Identification for Materials Property Prediction Models

Abstract: Machine learning models have been widely applied for material property prediction. However, practical application of these models can be hindered by a lack of information about how well they will perform on previously unseen types of materials. Because machine learning model predictions depend on the quality of the available training data, different domains of the material feature space are predicted with different accuracy levels by such models. The ability to identify such domains enables the ability to find… Show more

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