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Spatially embedded random networks

Spatially embedded random networks
Spatially embedded random networks
Many real-world networks analyzed in modern network theory have a natural spatial element; e.g., the Internet, social networks, neural networks, etc. Yet, aside from a comparatively small number of somewhat specialized and domain-specific studies, the spatial element is mostly ignored and, in particular, its relation to network structure disregarded. In this paper we introduce a model framework to analyze the mediation of network structure by spatial embedding; specifically, we model connectivity as dependent on the distance between network nodes. Our spatially embedded random networks construction is not primarily intended as an accurate model of any specific class of real-world networks, but rather to gain intuition for the effects of spatial embedding on network structure; nevertheless we are able to demonstrate, in a quite general setting, some constraints of spatial embedding on connectivity such as the effects of spatial symmetry, conditions for scale free degree distributions and the existence of small-world spatial networks. We also derive some standard structural statistics for spatially embedded networks and illustrate the application of our model framework with concrete examples.
1539-3755
Barnett, Lionel
df5b0411-ee06-4f89-b8c8-a120d8644aef
Di Paolo, Ezequiel
51ffe663-860e-46bd-ad42-1e9fd76a155e
Bullock, Seth
2ad576e4-56b8-4f31-84e0-51bd0b7a1cd3
Barnett, Lionel
df5b0411-ee06-4f89-b8c8-a120d8644aef
Di Paolo, Ezequiel
51ffe663-860e-46bd-ad42-1e9fd76a155e
Bullock, Seth
2ad576e4-56b8-4f31-84e0-51bd0b7a1cd3

Barnett, Lionel, Di Paolo, Ezequiel and Bullock, Seth (2007) Spatially embedded random networks. Physical Review E, 76 (5).

Record type: Article

Abstract

Many real-world networks analyzed in modern network theory have a natural spatial element; e.g., the Internet, social networks, neural networks, etc. Yet, aside from a comparatively small number of somewhat specialized and domain-specific studies, the spatial element is mostly ignored and, in particular, its relation to network structure disregarded. In this paper we introduce a model framework to analyze the mediation of network structure by spatial embedding; specifically, we model connectivity as dependent on the distance between network nodes. Our spatially embedded random networks construction is not primarily intended as an accurate model of any specific class of real-world networks, but rather to gain intuition for the effects of spatial embedding on network structure; nevertheless we are able to demonstrate, in a quite general setting, some constraints of spatial embedding on connectivity such as the effects of spatial symmetry, conditions for scale free degree distributions and the existence of small-world spatial networks. We also derive some standard structural statistics for spatially embedded networks and illustrate the application of our model framework with concrete examples.

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More information

Published date: 2007
Organisations: Agents, Interactions & Complexity

Identifiers

Local EPrints ID: 266764
URI: http://eprints.soton.ac.uk/id/eprint/266764
ISSN: 1539-3755
PURE UUID: 809f004e-d5b1-49c8-918e-129d4c3b26b7

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Date deposited: 07 Oct 2008 14:57
Last modified: 14 Mar 2024 08:35

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Contributors

Author: Lionel Barnett
Author: Ezequiel Di Paolo
Author: Seth Bullock

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