Homophily and long-run integration in social networks

  • Yann Bramoullé
  • , Sergio Currarini
  • , Matthew O. Jackson
  • , Paolo Pin
  • , Brian W. Rogers

    Research output: Contribution to journalArticlepeer-review

    Abstract

    We model network formation when heterogeneous nodes enter sequentially and form connections through both random meetings and network-based search, but with type-dependent biases. We show that there is "long-run integration", whereby the composition of types in sufficiently old nodes' neighborhoods approaches the global type-distribution, provided that the network-based search is unbiased. However, younger nodes' connections still reflect the biased meetings process. We derive the type-based degree distributions and group-level homophily patterns when there are two types and location-based biases. Finally, we illustrate aspects of the model with an empirical application to data on citations in physics journals.

    Original languageEnglish
    Pages (from-to)1754-1786
    Number of pages33
    JournalJournal of Economic Theory
    Volume147
    Issue number5
    DOIs
    StatePublished - Sep 2012

    Keywords

    • Citations
    • Degree distribution
    • Homophily
    • Integration
    • Network formation
    • Social networks

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