Sensors (Nov 2016)

Estimation of Anonymous Email Network Characteristics through Statistical Disclosure Attacks

  • Javier Portela,
  • Luis Javier García Villalba,
  • Alejandra Guadalupe Silva Trujillo,
  • Ana Lucila Sandoval Orozco,
  • Tai-Hoon Kim

DOI
https://doi.org/10.3390/s16111832
Journal volume & issue
Vol. 16, no. 11
p. 1832

Abstract

Read online

Social network analysis aims to obtain relational data from social systems to identify leaders, roles, and communities in order to model profiles or predict a specific behavior in users’ network. Preserving anonymity in social networks is a subject of major concern. Anonymity can be compromised by disclosing senders’ or receivers’ identity, message content, or sender-receiver relationships. Under strongly incomplete information, a statistical disclosure attack is used to estimate the network and node characteristics such as centrality and clustering measures, degree distribution, and small-world-ness. A database of email networks in 29 university faculties is used to study the method. A research on the small-world-ness and Power law characteristics of these email networks is also developed, helping to understand the behavior of small email networks.

Keywords