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Main Authors: Carvalho, Diogo P. L., Loponi, Ana C. B., Cassar, Daniel R.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.15312
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author Carvalho, Diogo P. L.
Loponi, Ana C. B.
Cassar, Daniel R.
author_facet Carvalho, Diogo P. L.
Loponi, Ana C. B.
Cassar, Daniel R.
contents Glass formation is one of the most important and fundamental open problems in glass science. Predicting whether a liquid can be easily frozen into a glass appears simple but is far from it. In this communication, we address glass formation in inorganic nonmetallic liquids using binary classification to predict the probability that a given liquid will form a glass under typical laboratory conditions. Using a dataset of more than 50,000 examples, we trained random forest classifiers that achieved ROC-AUC values around 0.89 and PR-AUC close to 0.95 on the holdout dataset (i.e., unseen data). A rigorous model selection routine was employed, including hyperparameter tuning with cross-validation, and four different data treatment routes were evaluated. Using SHAP values, we extracted valuable insights from the trained models that both agree with established knowledge and extend it. For example, we identified that the bandgap energy of the constituent chemical elements is positively correlated with glass formation. When glass stability parameters and Jezica were added to the dataset, no performance improvement was observed, but model complexity decreased significantly. This result is particularly relevant for composition screening, especially in inverse design problems.
format Preprint
id arxiv_https___arxiv_org_abs_2603_15312
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Will it form a glass? Tackling glass formation using binary classification
Carvalho, Diogo P. L.
Loponi, Ana C. B.
Cassar, Daniel R.
Materials Science
Soft Condensed Matter
Glass formation is one of the most important and fundamental open problems in glass science. Predicting whether a liquid can be easily frozen into a glass appears simple but is far from it. In this communication, we address glass formation in inorganic nonmetallic liquids using binary classification to predict the probability that a given liquid will form a glass under typical laboratory conditions. Using a dataset of more than 50,000 examples, we trained random forest classifiers that achieved ROC-AUC values around 0.89 and PR-AUC close to 0.95 on the holdout dataset (i.e., unseen data). A rigorous model selection routine was employed, including hyperparameter tuning with cross-validation, and four different data treatment routes were evaluated. Using SHAP values, we extracted valuable insights from the trained models that both agree with established knowledge and extend it. For example, we identified that the bandgap energy of the constituent chemical elements is positively correlated with glass formation. When glass stability parameters and Jezica were added to the dataset, no performance improvement was observed, but model complexity decreased significantly. This result is particularly relevant for composition screening, especially in inverse design problems.
title Will it form a glass? Tackling glass formation using binary classification
topic Materials Science
Soft Condensed Matter
url https://arxiv.org/abs/2603.15312