Formation energy prediction of neutral single-atom impurities in 2D materials using tree-based machine learning
Aniwat Kesorn,
Rutchapon Hunkao,
Cheewawut Na Talang
et al.
Abstract:We applied tree-based machine learning algorithms to predict the formation energy of impurities in 2D materials, where adsorbates and interstitial defects are investigated. Regression models based on random forest (RF), gradient boosting regression (GBR), histogram-based gradient-boosting regression (HGBR), and light gradient-boosting machine (LightGBM) algorithms are employed for training, testing, cross validation, and blind testing. We utilized chemical features from fundamental properties of atoms and supp… Show more
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