An assessment of the structural resolution of various fingerprints commonly used in machine learning
ORAL
Abstract
Atomic environment fingerprints are widely used in computational materials science. In this work, we compare the performance of fingerprints based on the Overlap Matrix(OM), the Smooth Overlap of Atomic Positions (SOAP), Behler-Parrinello atom-centered symmetry functions (ACSF), modified Behler-Parrinello symmetry functions (MBSF) used in the ANI-1ccxpotential and the Faber-Christensen-Huang-Lilienfeld (FCHL) fingerprint under various aspects. We study their ability to resolve differences in local environments and in particular examine whether there are certain atomic movements that leave the fingerprints exactly or nearly invariant. For this purpose, we introduce a sensitivity matrix whose eigenvalues quantify the effect of atomic displacement modes on the fingerprint. Further, we check whether these displacements correlate with the variation of localized physical quantities such as forces. Finally, we extend our examination to the correlation between molecular fingerprints obtained from the atomic fingerprints and global quantities of entire molecules.
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Presenters
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Behnam Parsaeifard
University of Basel
Authors
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Behnam Parsaeifard
University of Basel
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Deb De
University of Basel
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Anders Christensen
University of Basel
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Felix A Faber
University of Basel
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Emir Kocer
goettingen university
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Sandip De
University of Basel
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Jorg Behler
Theoretische Chemie, Georg-August-Universität Göttingen, goettingen university, University of Göttingen
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O. Von Lilienfeld
University of Basel
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Stefan A Goedecker
Physics, University of Basel, University of Basel