Heterogeneity of Human Activity Levels Gives Rise to Power-Law Distribution in Online Social Networks

ORAL

Abstract

It is well established that the distribution of social ties (degree) of an individual in a social network follows a power-law. How this heavy-tailed distribution arises in practice, however, has not been conclusively demonstrated. Mechanisms of ``preferential-attachment'' and optimization are often cited as the origin of heavy-tailed degree distributions. Our data indicate that there is a different cause for these phenomena. For different social networks we find an intrinsic relationship degree and activity (number of posts, edits etc): The degree distribution is entirely random except for its mean value which depends deterministically on the volume of the users' activity. This suggests that heavy-tailed degree distribution is a consequence of the intrinsic activity of users. More importantly, human activity deterministically affects the mean success at establishing links in a social network, and the specific degree of a given user is otherwise random following a ``maximum entropy attachment'' model.

Authors

  • Lev Muchnik

    • The Hebrew University of Jerusalem
  • Sen Pei

    • City College of New York, Beihang University
  • Lucas Parra

    • City College of New York
  • Saulo Reis

    • Universidade Federal do Ceara
  • Jos\'e Andrade, Jr

    • Universidade Federal do Ceara
  • Shlomo Havlin

    • Minerva Center and Physics Department, Bar-Ilan University, Ramat Gan 52900, Israel
    • Bar-Ilan University
  • Hernan Makse

    • Levich Institute and Physics Department, City College of New York, New York, New York 10031, USA
    • City College of New York