The widespread adoption of machine learning surrogate models has significantly improved the scale and complexity of systems and processes that can be explored accurately and efficiently using atomistic modeling. However, the inherently data-driven nature of machine learning models introduces uncertainties that must be quantified, understood, and effectively managed to ensure reliable predictions and conclusions. Building upon these premises, in this perspective, we first overview state-of-the-art uncertainty estimation methods, from Bayesian frameworks to ensembling techniques, and discuss their application in atomistic modeling. We then examine the interplay between model accuracy, uncertainty, training dataset composition, data acquisition strategies, model transferability, and robustness. In doing so, we synthesize insights from the existing literature and highlight areas of ongoing debate.

Uncertainty in the era of machine learning for atomistic modeling / Grasselli, F.; Chong, S.; Kapil, V.; Bonfanti, S.; Rossi, K.. - In: DIGITAL DISCOVERY. - ISSN 2635-098X. - 4:10(2025), pp. 2654-2675. [10.1039/d5dd00102a]

Uncertainty in the era of machine learning for atomistic modeling

Grasselli F.;
2025

Abstract

The widespread adoption of machine learning surrogate models has significantly improved the scale and complexity of systems and processes that can be explored accurately and efficiently using atomistic modeling. However, the inherently data-driven nature of machine learning models introduces uncertainties that must be quantified, understood, and effectively managed to ensure reliable predictions and conclusions. Building upon these premises, in this perspective, we first overview state-of-the-art uncertainty estimation methods, from Bayesian frameworks to ensembling techniques, and discuss their application in atomistic modeling. We then examine the interplay between model accuracy, uncertainty, training dataset composition, data acquisition strategies, model transferability, and robustness. In doing so, we synthesize insights from the existing literature and highlight areas of ongoing debate.
2025
4
10
2654
2675
Uncertainty in the era of machine learning for atomistic modeling / Grasselli, F.; Chong, S.; Kapil, V.; Bonfanti, S.; Rossi, K.. - In: DIGITAL DISCOVERY. - ISSN 2635-098X. - 4:10(2025), pp. 2654-2675. [10.1039/d5dd00102a]
Grasselli, F.; Chong, S.; Kapil, V.; Bonfanti, S.; Rossi, K.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1400630
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