MEASURING RECIPROCITY IN A DIRECTED PREFERENTIAL ATTACHMENT NETWORK Academic Article uri icon

abstract

  • AbstractEmpirical studies (e.g. Jiang et al. (2015) and Mislove et al. (2007)) show that online social networks have not only in- and out-degree distributions with Pareto-like tails, but also a high proportion of reciprocal edges. A classical directed preferential attachment (PA) model generates in- and out-degree distributions with power-law tails, but the theoretical properties of the reciprocity feature in this model have not yet been studied. We derive asymptotic results on the number of reciprocal edges between two fixed nodes, as well as the proportion of reciprocal edges in the entire PA network. We see that with certain choices of parameters, the proportion of reciprocal edges in a directed PA network is close to 0, which differs from the empirical observation. This points out one potential problem of fitting a classical PA model to a given network dataset with high reciprocity, and indicates that alternative models need to be considered.

published proceedings

  • ADVANCES IN APPLIED PROBABILITY

author list (cited authors)

  • Wang, T., & Resnick, S. I.

citation count

  • 7

complete list of authors

  • Wang, Tiandong||Resnick, Sidney I

publication date

  • September 2022