2013
DOI: 10.1002/jcc.23333
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Accuracy and tractability of a kriging model of intramolecular polarizable multipolar electrostatics and its application to histidine

Abstract: We propose a generic method to model polarization in the context of high-rank multipolar electrostatics. This method involves the machine learning technique kriging, here used to capture the response of an atomic multipole moment of a given atom to a change in the positions of the atoms surrounding this atom. The atoms are malleable boxes with sharp boundaries, they do not overlap and exhaust space. The method is applied to histidine where it is able to predict atomic multipole moments (up to hexadecapole) for… Show more

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Cited by 52 publications
(81 citation statements)
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“…The kriging method is briefly outlined here but has been discussed in greater detail in a previous publication of group [5] and is based on the treatment of Jones et al [62,63]. Kriging maps an output's response to any given input.…”
Section: Methodsmentioning
confidence: 99%
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“…The kriging method is briefly outlined here but has been discussed in greater detail in a previous publication of group [5] and is based on the treatment of Jones et al [62,63]. Kriging maps an output's response to any given input.…”
Section: Methodsmentioning
confidence: 99%
“…The quantity a i is the ith element of the vector a = R −1 (y − 1μ) where R is a matrix of error correlations between training points, and 1 is a column vector of ones. The error from the global term is determined by the distance between the new input point (x * ) and a known input point (x i ), each scaled by the magnitude [5] ϕ. The sum of these errors gives the appropriate deviation from the background term and results…”
Section: Methodsmentioning
confidence: 99%
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“…More precisely, FFLUX needs to be trained by a sufficient number of relevant geometries such that it can interpolate a property of a given atom of interest between the data learnt. The selected [12] machine learning method is Kriging [13], which has been tested successfully on a variety of systems, including ethanol [14], (peptide-capped) alanine [15], the microhydrated sodium ion [15], N-methylacetamide (NMA) and histidine [16], the four aromatic (peptidecapped) amino acids [17], all naturally occurring amino acids [18], helical deca-alanines [19,20], water clusters [21], cholesterol [22] and carbohydrates [23]. This collective work shows an existing proof-of-concept that kriging models generate sufficiently accurate atomic property models, and they do this directly from the coordinates of the surrounding atoms.…”
Section: Introductionmentioning
confidence: 99%