An entropy-maximized active learning method for MLIPs that selects diverse configurations using per-atom and per-config entropy measures, yielding 3-10x lower energy MAE than random MD sampling on carbon, silicon, and NaCl with 100-800 training structures.
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Dataset-aware entropy-maximized active learning for machine-learned interatomic potentials
An entropy-maximized active learning method for MLIPs that selects diverse configurations using per-atom and per-config entropy measures, yielding 3-10x lower energy MAE than random MD sampling on carbon, silicon, and NaCl with 100-800 training structures.