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Metric Models for Random Graphs

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Abstract

Many problems entail the analysis of data that are independent and identically distributed random graphs. Useful inference requires flexible probability models for such random graphs; these models should have interpretable location and scale parameters, and support the establishment of confidence regions, maximum likelihood estimates, goodness-of-fit tests, Bayesian inference, and an appropriate analogue of linear model theory. Banks and Carley (1994) develop a simple probability model and sketch some analyses; this paper extends that work so that analysts are able to choose models that reflect application-specific metrics on the set of graphs. The strategy applies to graphs, directed graphs, hypergraphs, and trees, and often extends to objects in countable metric spaces.

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Banks, D., Constantine, G. Metric Models for Random Graphs. J. of Classification 15, 199–223 (1998). https://doi.org/10.1007/s003579900031

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  • DOI: https://doi.org/10.1007/s003579900031

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