Measuring transferability issues in machine-learning force fields: the example of gold-iron interactions with linearized potentials

被引:21
作者
Benoit, Magali [1 ]
Amodeo, Jonathan [2 ]
Combettes, Segolene [1 ]
Khaled, Ibrahim [3 ]
Roux, Aurelien [3 ]
Lam, Julien [3 ]
机构
[1] Univ Toulouse, CEMES, CNRS, 29 Rue Jeanne Marvig, F-31055 Toulouse, France
[2] Univ Lyon, INSA Lyon, UMR CNRS 5510, F-69621 Villeurbanne, France
[3] Univ Libre Bruxelles, Ctr Nonlinear Phenomena & Complex Syst, Code Postal 231,Blvd Triomphe, B-1050 Brussels, Belgium
来源
MACHINE LEARNING-SCIENCE AND TECHNOLOGY | 2021年 / 2卷 / 02期
关键词
machine-learning interaction potential; LassoLars; gold-iron; transferability; nanoparticle; FE-AU; WATER; EFFICIENCY; INTERFACE;
D O I
10.1088/2632-2153/abc9fd
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Machine-learning force fields have been increasingly employed in order to extend the possibility of current first-principles calculations. However, the transferability of the obtained potential cannot always be guaranteed in situations that are outside the original database. To study such limitation, we examined the very difficult case of the interactions in gold-iron nanoparticles. For the machine-learning potential, we employed a linearized formulation that is parameterized using a penalizing regression scheme which allows us to control the complexity of the obtained potential. We showed that while having a more complex potential allows for a better agreement with the training database, it can also lead to overfitting issues and a lower accuracy in untrained systems.
引用
收藏
页数:11
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