Detailed Information

Cited 0 time in webofscience Cited 0 time in scopus
Metadata Downloads

Ensemble learning of coarse-grained molecular dynamics force fields with a kernel approach

Full metadata record
DC Field Value Language
dc.contributor.authorWang, Jiang-
dc.contributor.authorChmiela, Stefan-
dc.contributor.authorMueller, Klaus-Robert-
dc.contributor.authorNoe, Frank-
dc.contributor.authorClementi, Cecilia-
dc.date.accessioned2021-08-30T23:17:29Z-
dc.date.available2021-08-30T23:17:29Z-
dc.date.created2021-06-19-
dc.date.issued2020-05-21-
dc.identifier.issn0021-9606-
dc.identifier.urihttps://scholar.korea.ac.kr/handle/2021.sw.korea/55654-
dc.description.abstractGradient-domain machine learning (GDML) is an accurate and efficient approach to learn a molecular potential and associated force field based on the kernel ridge regression algorithm. Here, we demonstrate its application to learn an effective coarse-grained (CG) model from all-atom simulation data in a sample efficient manner. The CG force field is learned by following the thermodynamic consistency principle, here by minimizing the error between the predicted CG force and the all-atom mean force in the CG coordinates. Solving this problem by GDML directly is impossible because coarse-graining requires averaging over many training data points, resulting in impractical memory requirements for storing the kernel matrices. In this work, we propose a data-efficient and memory-saving alternative. Using ensemble learning and stratified sampling, we propose a 2-layer training scheme that enables GDML to learn an effective CG model. We illustrate our method on a simple biomolecular system, alanine dipeptide, by reconstructing the free energy landscape of a CG variant of this molecule. Our novel GDML training scheme yields a smaller free energy error than neural networks when the training set is small, and a comparably high accuracy when the training set is sufficiently large.-
dc.languageEnglish-
dc.language.isoen-
dc.publisherAMER INST PHYSICS-
dc.subjectMODEL-
dc.subjectSIMULATION-
dc.subjectDISTRIBUTIONS-
dc.subjectPOTENTIALS-
dc.subjectSEPARATION-
dc.subjectKINETICS-
dc.subjectSCALE-
dc.titleEnsemble learning of coarse-grained molecular dynamics force fields with a kernel approach-
dc.typeArticle-
dc.contributor.affiliatedAuthorMueller, Klaus-Robert-
dc.identifier.doi10.1063/5.0007276-
dc.identifier.wosid000536701800001-
dc.identifier.bibliographicCitationJOURNAL OF CHEMICAL PHYSICS, v.152, no.19-
dc.relation.isPartOfJOURNAL OF CHEMICAL PHYSICS-
dc.citation.titleJOURNAL OF CHEMICAL PHYSICS-
dc.citation.volume152-
dc.citation.number19-
dc.type.rimsART-
dc.type.docTypeArticle-
dc.description.journalClass1-
dc.description.journalRegisteredClassscie-
dc.description.journalRegisteredClassscopus-
dc.relation.journalResearchAreaChemistry-
dc.relation.journalResearchAreaPhysics-
dc.relation.journalWebOfScienceCategoryChemistry, Physical-
dc.relation.journalWebOfScienceCategoryPhysics, Atomic, Molecular & Chemical-
dc.subject.keywordPlusMODEL-
dc.subject.keywordPlusSIMULATION-
dc.subject.keywordPlusDISTRIBUTIONS-
dc.subject.keywordPlusPOTENTIALS-
dc.subject.keywordPlusSEPARATION-
dc.subject.keywordPlusKINETICS-
dc.subject.keywordPlusSCALE-
Files in This Item
There are no files associated with this item.
Appears in
Collections
Graduate School > Department of Artificial Intelligence > 1. Journal Articles

qrcode

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.

Altmetrics

Total Views & Downloads

BROWSE