EPJ Data Science (Jun 2020)

Efficient modeling of higher-order dependencies in networks: from algorithm to application for anomaly detection

  • Mandana Saebi,
  • Jian Xu,
  • Lance M. Kaplan,
  • Bruno Ribeiro,
  • Nitesh V. Chawla

DOI
https://doi.org/10.1140/epjds/s13688-020-00233-y
Journal volume & issue
Vol. 9, no. 1
pp. 1 – 22

Abstract

Read online

Abstract Complex systems, represented as dynamic networks, comprise of components that influence each other via direct and/or indirect interactions. Recent research has shown the importance of using Higher-Order Networks (HONs) for modeling and analyzing such complex systems, as the typical Markovian assumption in developing the First Order Network (FON) can be limiting. This higher-order network representation not only creates a more accurate representation of the underlying complex system, but also leads to more accurate network analysis. In this paper, we first present a scalable and accurate model, BuildHON+, for higher-order network representation of data derived from a complex system with various orders of dependencies. Then, we show that this higher-order network representation modeled by BuildHON+ is significantly more accurate in identifying anomalies than FON, demonstrating a need for the higher-order network representation and modeling of complex systems for deriving meaningful conclusions.

Keywords