Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/20469
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dc.contributor.authorWang, K-
dc.contributor.authorChakrabarty, D-
dc.date.accessioned2020-03-10T14:46:42Z-
dc.date.available2020-03-10T14:46:42Z-
dc.date.issued2020-
dc.identifierarXiv:2002.01339v1-
dc.identifierORCID iD: Dalia Chakrabarty https://orcid.org/0000-0003-1246-4235-
dc.identifier.citationWang, K. and Chakrabarty, D. (2020) 'Soft Random Graphs in Probabilistic Metric Spaces & Inter-graph Distance', arXiv:2002.01339v1 [stat.ME], pp. 1 - 36. doi: 10.48550/arXiv.2002.01339.en_US
dc.identifier.urihttps://bura.brunel.ac.uk/handle/2438/20469-
dc.description.abstractWe present a new method for learning Soft Random Geometric Graphs (SRGGs), drawn in probabilistic metric spaces, with the connection function of the graph defined as the marginal posterior probability of an edge random variable, given the correlation between the nodes connected by that edge. In fact, this inter-node correlation matrix is itself a random variable in our learning strategy, and we learn this by identifying each node as a random variable, measurements of which comprise a column of a given multivariate dataset. We undertake inference with Metropolis with a 2-block update scheme. The SRGG is shown to be generated by a non-homogeneous Poisson point process, the intensity of which is location-dependent. Given the multivariate dataset, likelihood of the inter-column correlation matrix is attained following achievement of a closed-form marginalisation over all inter-row correlation matrices. Distance between a pair of graphical models learnt given the respective datasets, offers the absolute correlation between the given datasets; such inter-graph distance computation is our ultimate objective, and is achieved using a newly introduced metric that resembles an uncertainty-normalised Hellinger distance between posterior probabilities of the two learnt SRGGs, given the respective datasets. Two sets of empirical illustrations on real data are undertaken, and application to simulated data is included to exemplify the effect of incorporating measurement noise in the learning of a graphical model.en_US
dc.language.isoenen_US
dc.publisherCornell Universityen_US
dc.subjectsoft random geometric graphsen_US
dc.subjectprobabilistic metric spacesen_US
dc.subjectinter-graph distanceen_US
dc.subjectHellinger distanceen_US
dc.subjectmetropolis by block updateen_US
dc.subjecthuman disease-symptom networken_US
dc.titleSoft Random Graphs in Probabilistic Metric Spaces & Inter-graph Distanceen_US
dc.typeArticleen_US
dc.identifier.doihttps://doi.org/10.48550/arXiv.2002.01339-
pubs.notesarXiv admin note: substantial text overlap with arXiv:1710.11292-
dc.identifier.eissn2331-8422-
Appears in Collections:Dept of Mathematics Research Papers

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