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Electronic excited states from physically-constrained machine learning

Authors :
Cignoni, Edoardo
Suman, Divya
Nigam, Jigyasa
Cupellini, Lorenzo
Mennucci, Benedetta
Ceriotti, Michele
Cignoni, Edoardo
Suman, Divya
Nigam, Jigyasa
Cupellini, Lorenzo
Mennucci, Benedetta
Ceriotti, Michele
Publication Year :
2023

Abstract

Data-driven techniques are increasingly used to replace electronic-structure calculations of matter. In this context, a relevant question is whether machine learning (ML) should be applied directly to predict the desired properties or be combined explicitly with physically-grounded operations. We present an example of an integrated modeling approach, in which a symmetry-adapted ML model of an effective Hamiltonian is trained to reproduce electronic excitations from a quantum-mechanical calculation. The resulting model can make predictions for molecules that are much larger and more complex than those that it is trained on, and allows for dramatic computational savings by indirectly targeting the outputs of well-converged calculations while using a parameterization corresponding to a minimal atom-centered basis. These results emphasize the merits of intertwining data-driven techniques with physical approximations, improving the transferability and interpretability of ML models without affecting their accuracy and computational efficiency, and providing a blueprint for developing ML-augmented electronic-structure methods.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438495411
Document Type :
Electronic Resource