Topological Analysis of Network Systems for Intrusion Detections

Authors

  • Rohitha Goonatilake Texas A&M International University, TX 78041
  • Susantha Herath St. Cloud State University, MN 56301

DOI:

https://doi.org/10.14738/tnc.42.1989

Keywords:

Intrusion, conditional probability, network system, regression, data analysis

Abstract

An understanding of how well networks will respond to ongoing attack threats is an important task in formulating strategies to protect unauthorized network activities. The study of topological properties of network architecture sheds some light in this effort. The purpose of this paper is to study several scenarios that address topological structures and related analyses of network systems to begin the appropriate discussion towards this question. Analysis of the probabilistic state finite automation and its probability distribution theory play a pivotal role in the discussion.

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Published

2016-05-03

How to Cite

Goonatilake, R., & Herath, S. (2016). Topological Analysis of Network Systems for Intrusion Detections. Discoveries in Agriculture and Food Sciences, 4(2), 28. https://doi.org/10.14738/tnc.42.1989