Ramakrishnan, Raghunathan and von Lilienfeld, O. Anatole. (2015) Many Molecular Properties from One Kernel in Chemical Space. Chimia, 69 (4). pp. 182-186.
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Official URL: http://edoc.unibas.ch/53265/
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Abstract
We introduce property-independent kernels for machine learning models of arbitrarily many molecular properties. The kernels encode molecular structures for training sets of varying size, as well as similarity measures sufficiently diffuse in chemical space to sample over all training molecules. When provided with the corresponding molecular reference properties, they enable the instantaneous generation of machine learning models which can be systematically improved through the addition of more data. This idea is exemplified for single kernel based modeling of internal energy, enthalpy, free energy, heat capacity, polarizability, electronic spread, zero-point vibrational energy, energies of frontier orbitals, HOMO-LUMO gap, and the highest fundamental vibrational wavenumber. Models of these properties are trained and tested using 112,000 organic molecules of similar size. The resulting models are discussed as well as the kernels' use for generating and using other property models.
Faculties and Departments: | 05 Faculty of Science > Departement Chemie > Former Organization Units Chemistry > Physikalische Chemie (Lilienfeld) |
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UniBasel Contributors: | von Lilienfeld, Anatole |
Item Type: | Article, refereed |
Article Subtype: | Research Article |
Publisher: | Schweizerische Chemische Gesellschaft |
ISSN: | 0009-4293 |
Note: | Publication type according to Uni Basel Research Database: Journal article |
Language: | English |
Identification Number: |
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edoc DOI: | |
Last Modified: | 25 Jan 2017 14:20 |
Deposited On: | 25 Jan 2017 14:20 |
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