Publication | Closed Access
Active learning strategies for atomic cluster expansion models
69
Citations
43
References
2023
Year
Cluster ComputingEngineeringMachine LearningComputational ChemistryChemistryAtomic Cluster ExpansionEnergy MinimizationMolecular DynamicsData ScienceData MiningPhysic Aware Machine LearningBiophysicsCluster ScienceEnsemble LearningComputational Learning TheoryKnowledge DiscoveryComputer ScienceQuantum ChemistryExtrapolation GradeNatural SciencesMolecular PropertyCluster ChemistryActive Learning Strategies
The atomic cluster expansion (ACE) was proposed recently as a new class of data-driven interatomic potentials with a formally complete basis set. Since the development of any interatomic potential requires a careful selection of training data and thorough validation, an automation of the construction of the training dataset as well as an indication of a model's uncertainty are highly desirable. In this work, we compare the performance of two approaches for uncertainty indication of ACE models based on the D-optimality criterion and ensemble learning. While both approaches show comparable predictions, the extrapolation grade based on the D-optimality (MaxVol algorithm) is more computationally efficient. In addition, the extrapolation grade indicator enables an active exploration of new structures, opening the way to the automated discovery of rare-event configurations. We demonstrate that active learning is also applicable to explore local atomic environments from large-scale molecular-dynamics simulations.
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