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arxiv: 1405.0157 · v1 · pith:S7SFZK7Hnew · submitted 2014-05-01 · 💻 cs.SI · physics.soc-ph

Dimensionality of social networks using motifs and eigenvalues

classification 💻 cs.SI physics.soc-ph
keywords networkssocialdifferentdimensiondimensionalitydistributionhypothesisnetwork
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We consider the dimensionality of social networks, and develop experiments aimed at predicting that dimension. We find that a social network model with nodes and links sampled from an $m$-dimensional metric space with power-law distributed influence regions best fits samples from real-world networks when $m$ scales logarithmically with the number of nodes of the network. This supports a logarithmic dimension hypothesis, and we provide evidence with two different social networks, Facebook and LinkedIn. Further, we employ two different methods for confirming the hypothesis: the first uses the distribution of motif counts, and the second exploits the eigenvalue distribution.

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