Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session J45: Emerging Trends in Molecular Dynamics Simulations and Machine Learning I
2:30 PM–5:30 PM,
Tuesday, March 3, 2020
Room: 706
Sponsoring
Units:
DCOMP GDS DSOFT DPOLY
Chair: Priya Vashishta, University of Southern California
Abstract: J45.00002 : Unbiasing machine learning for molecular dynamics: emphasising out-of-equilibrium geometries using clustering
Presenter:
Grégory Cordeiro Fonseca
(University of Luxembourg)
Authors:
Grégory Cordeiro Fonseca
(University of Luxembourg)
Igor Poltavskyi
(University of Luxembourg)
Alexandre Tkatchenko
(University of Luxembourg)
We propose a method to train unbiased ML FF, which leads to equally accurate predictions independently of the density of training data. To achieve this, we divide datasets into smaller subsets (clusters) based on data similarities. Then, the quality of a ML model is evaluated for each individual cluster, thereby revealing problematic cases. Representative data for each problematic cluster is added to the training set, and the ML model is retrained. The improved learning process results in a flattening of the prediction errors throughout the reference data. The method is applied to molecular trajectory datasets, decreasing the largest errors of the obtained ML FF up to an order of magnitude.
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