Mercator: uncovering faithful hyperbolic embeddings of complex networks

dc.contributor.authorGuillermo García-Pérez
dc.contributor.authorAntoine Allard
dc.contributor.authorM Ángeles Serrano
dc.contributor.authorMarián Boguñá
dc.contributor.organizationfi=teoreettisen fysiikan laboratorio|en=Laboratory of Theoretical Physics|
dc.contributor.organization-code2606703
dc.converis.publication-id45454239
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/45454239
dc.date.accessioned2022-10-27T12:17:16Z
dc.date.available2022-10-27T12:17:16Z
dc.description.abstractWe introduce Mercator, a reliable embedding method to map real complex networks into their hyperbolic latent geometry. The method assumes that the structure of networks is well described by the popularity <b>×</b> similarity <img alt="${{\mathbb{S}}}^{1}/{{\mathbb{H}}}^{2}$" src="https://cdn.iopscience.com/images/1367-2630/21/12/123033/njpab57d2ieqn1.gif" align="MIDDLE" /> static geometric network model, which can accommodate arbitrary degree distributions and reproduces many pivotal properties of real networks, including self-similarity patterns. The algorithm mixes machine learning and maximum likelihood (ML) approaches to infer the coordinates of the nodes in the underlying hyperbolic disk with the best matching between the observed network topology and the geometric model. In its fast mode, Mercator uses a model-adjusted machine learning technique performing dimensional reduction to produce a fast and accurate map, whose quality already outperforms other embedding algorithms in the literature. In the refined Mercator mode, the fast mode embedding result is taken as an initial condition in a ML estimation, which significantly improves the quality of the final embedding. Apart from its accuracy as an embedding tool, Mercator has the clear advantage of systematically inferring not only node orderings, or angular positions, but also the hidden degrees and global model parameters, and has the ability to embed networks with arbitrary degree distributions. Overall, our results suggest that mixing machine learning and ML techniques in a model-dependent framework can boost the meaningful mapping of complex networks.
dc.identifier.eissn1367-2630
dc.identifier.jour-issn1367-2630
dc.identifier.olddbid174471
dc.identifier.oldhandle10024/157565
dc.identifier.urihttps://www.utupub.fi/handle/11111/34327
dc.identifier.urlhttps://iopscience.iop.org/article/10.1088/1367-2630/ab57d2
dc.identifier.urnURN:NBN:fi-fe2021042822978
dc.language.isoen
dc.okm.affiliatedauthorGarcia Pérez, Guillermo
dc.okm.discipline114 Physical sciencesen_GB
dc.okm.discipline114 Fysiikkafi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisherInstitute of Physics Pub.
dc.publisher.countryUnited Kingdomen_GB
dc.publisher.countryBritanniafi_FI
dc.publisher.country-codeGB
dc.relation.articlenumber123033
dc.relation.doi10.1088/1367-2630/ab57d2
dc.relation.ispartofjournalNew Journal of Physics
dc.relation.issue12
dc.relation.volume21
dc.source.identifierhttps://www.utupub.fi/handle/10024/157565
dc.titleMercator: uncovering faithful hyperbolic embeddings of complex networks
dc.year.issued2019

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