We probe the accuracy of linear ridge regression employing a three-body local density representation derived from the atomic cluster expansion. We benchmark the accuracy of this framework in the prediction of formation energies and atomic forces in molecules and solids. We find that such a simple regression framework performs on par with state-of-the-art machine learning methods which are, in most cases, more complex and more computationally demanding. Subsequently, we look for ways to sparsify the descriptor and further improve the computational efficiency of the method. To this aim, we use both principal component analysis and least absolute shrinkage operator regression for energy fitting on six single-element datasets. Both methods highlight the possibility of constructing a descriptor that is four times smaller than the original with a similar or even improved accuracy. Furthermore, we find that the reduced descriptors share a sizable fraction of their features across the six independent datasets, hinting at the possibility of designing material-agnostic, optimally compressed, and accurate descriptors.
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14 June 2021
Research Article|
June 11 2021
Compact atomic descriptors enable accurate predictions via linear models Available to Purchase
Claudio Zeni
;
Claudio Zeni
a)
1
Physics Area, International School for Advanced Studies
, Trieste, Italy
a)Author to whom correspondence should be addressed: [email protected]
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Kevin Rossi
;
Kevin Rossi
2
Laboratory of Nanochemistry, Institute of Chemistry and Chemical Engineering, Ecole Polytechnique Fédérale de Lausanne
, Lausanne, CH, Switzerland
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Aldo Glielmo
;
Aldo Glielmo
1
Physics Area, International School for Advanced Studies
, Trieste, Italy
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Stefano de Gironcoli
Stefano de Gironcoli
1
Physics Area, International School for Advanced Studies
, Trieste, Italy
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Claudio Zeni
1,a)
Kevin Rossi
2
Aldo Glielmo
1
Stefano de Gironcoli
1
1
Physics Area, International School for Advanced Studies
, Trieste, Italy
2
Laboratory of Nanochemistry, Institute of Chemistry and Chemical Engineering, Ecole Polytechnique Fédérale de Lausanne
, Lausanne, CH, Switzerland
a)Author to whom correspondence should be addressed: [email protected]
J. Chem. Phys. 154, 224112 (2021)
Article history
Received:
April 02 2021
Accepted:
May 24 2021
Citation
Claudio Zeni, Kevin Rossi, Aldo Glielmo, Stefano de Gironcoli; Compact atomic descriptors enable accurate predictions via linear models. J. Chem. Phys. 14 June 2021; 154 (22): 224112. https://doi.org/10.1063/5.0052961
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