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Preprint article · Conference paper · Book chapter

Second-Order Assortative Mixing in Social Networks

From

University College London1

Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Cognitive Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark3

In a social network, the number of links of a node, or node degree, is often assumed as a proxy for the node’s importance or prominence within the network. It is known that social networks exhibit the (first-order) assortative mixing, i.e. if two nodes are connected, they tend to have similar node degrees, suggesting that people tend to mix with those of comparable prominence.

In this paper, we report the second-order assortative mixing in social networks. If two nodes are connected, we measure the degree correlation between their most prominent neighbours, rather than between the two nodes themselves. We observe very strong second-order assortative mixing in social networks, often significantly stronger than the first-order assortative mixing.

This suggests that if two people interact in a social network, then the importance of the most prominent person each knows is very likely to be the same. This is also true if we measure the average prominence of neighbours of the two people. This property is weaker or negative in non-social networks.

We investigate a number of possible explanations for this property. However, none of them was found to provide an adequate explanation. We therefore conclude that second-order assortative mixing is a new property of social networks.

Language: English
Publisher: Springer
Year: 2017
Pages: 3-15
Proceedings: 8th Conference on Complex Networks Complenet 2017
Series: Springer Proceedings in Complexity
Journal subtitle: Proceedings of the 8th Conference on Complex Networks Complenet 2017
ISBN: 3319542400 , 3319542419 , 9783319542409 and 9783319542416
ISSN: 22138684 and 22138692
Types: Preprint article , Conference paper and Book chapter
DOI: 10.1007/978-3-319-54241-6_1
ORCIDs: Hansen, Lars Kai

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