September 30, 2016
Conference Paper

Analysis of Community Detection Algorithms for Large Scale Cyber Networks

Abstract

The aim of this project is to use existing community detection algorithms on an IP network dataset to create supernodes within the network. This study compares the performance of different algorithms on the network in terms of running time. The paper begins with an introduction to the concept of clustering and community detection followed by the research question that the team aimed to address. Further the paper describes the graph metrics that were considered in order to shortlist algorithms followed by a brief explanation of each algorithm with respect to the graph metric on which it is based. The next section in the paper describes the methodology used by the team in order to run the algorithms and determine which algorithm is most efficient with respect to running time. Finally, the last section of the paper includes the results obtained by the team and a conclusion based on those results as well as future work.

Revised: January 5, 2017 | Published: September 30, 2016

Citation

Mane P., S. Shanbhag, T. Kamath, P.S. Mackey, and J. Springer. 2016. Analysis of Community Detection Algorithms for Large Scale Cyber Networks. In Proceedings of the 2016 Information Security Research and Education (INSuRE) Conference (INSuRECon-16), September 30, 2016. West Lafayette, Indiana:Information Security Research and Education (INSuRE). PNNL-SA-119853.