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dc.date.accessioned2023-11-15T12:45:06Z
dc.date.available2023-11-15T12:45:06Z
dc.date.created2023-04-18T12:20:59Z
dc.date.issued2023
dc.identifier.citationKneiding, Hannes Lukin, Ruslan Lang, Lucas Reine, Simen Pedersen, Thomas Bondo De Bin, Riccardo Balcells, David . Deep learning metal complex properties with natural quantum graphs. Digital Discovery. 2023, 2(3), 618-633
dc.identifier.urihttp://hdl.handle.net/10852/105833
dc.description.abstractMachine learning can make a strong contribution to accelerating the discovery of transition metal complexes (TMC). These compounds will play a key role in the development of new technologies for which there is an urgent need, including the production of green hydrogen from renewable sources. Despite the recent developments in machine learning for drug discovery and organic chemistry in general, the application of these methods to TMCs remains challenged by their higher complexity and the limited availability of large datasets. In this work, we report a representation for deep graph learning on TMCs – the natural quantum graph (NatQG), which leverages the electronic structure data available from natural bond orbital (NBO) analysis. This data was used to define both the topology and the information expressed by the NatQG graphs. At the topology level, two different NatQG flavors were developed: u-NatQG, with undirected edges, and d-NatQG, with edges directed along donor → acceptor orbital interactions. At the information level, the node and edge attribute vectors of both graphs contain NBO data, including natural charges and bond orders. The NatQG graphs were used to develop graph neural networks (GNNs) for the prediction of the quantum properties underlying the structure and reactivity of TMCs (e.g. HOMO–LUMO gap and polarizability). These models surpassed baselines based on traditional descriptors and performed at a level similar to, or higher than, state-of-the-art GNNs based on radial cutoffs. The results showed that the electronic structure information encoded by the models has a stronger impact on its accuracy than the geometric information. With the aim of benchmarking the GNNs, we also developed the transition metal quantum mechanics graph dataset (tmQMg), which provides the geometries, properties, and NatQG graphs of 60k TMCs.
dc.description.abstractDeep learning metal complex properties with natural quantum graphs
dc.languageEN
dc.rightsAttribution-NonCommercial 3.0 Unported
dc.rights.urihttps://creativecommons.org/licenses/by-nc/3.0/
dc.titleDeep learning metal complex properties with natural quantum graphs
dc.title.alternativeENEngelskEnglishDeep learning metal complex properties with natural quantum graphs
dc.typeJournal article
dc.creator.authorKneiding, Hannes
dc.creator.authorLukin, Ruslan
dc.creator.authorLang, Lucas
dc.creator.authorReine, Simen
dc.creator.authorPedersen, Thomas Bondo
dc.creator.authorDe Bin, Riccardo
dc.creator.authorBalcells, David
cristin.unitcode185,15,12,70
cristin.unitnameHylleraas-senteret
cristin.ispublishedtrue
cristin.fulltextoriginal
dc.identifier.cristin2141574
dc.identifier.bibliographiccitationinfo:ofi/fmt:kev:mtx:ctx&ctx_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:journal&rft.jtitle=Digital Discovery&rft.volume=2&rft.spage=618&rft.date=2023
dc.identifier.jtitleDigital Discovery
dc.identifier.volume2
dc.identifier.issue3
dc.identifier.startpage618
dc.identifier.endpage633
dc.identifier.doihttps://doi.org/10.1039/d2dd00129b
dc.type.documentTidsskriftartikkel
dc.type.peerreviewedPeer reviewed
dc.source.issn2635-098X
dc.type.versionPublishedVersion
dc.relation.projectNFR/262695
dc.relation.projectSIGMA2/NN4654K
dc.relation.projectEC/H2020/101025672
dc.relation.projectNFR/325003
dc.relation.projectEC/H2020/945371


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This item's license is: Attribution-NonCommercial 3.0 Unported