6533b7d6fe1ef96bd1265ced
RESEARCH PRODUCT
A bio-inspired approach to attack graphs analysis
Alessio MerloMauro MigliardiSalvatore VitabileVincenzo ContiSimone Sante Ruffosubject
Bio-inspired techniqueTheoretical computer scienceComputer scienceNetwork securitybusiness.industrymedia_common.quotation_subjectComputer Science (all)Bio-inspired techniquesNetwork securityAttack graphPathway analysisFlux balance analysisTheoretical Computer ScienceInterdependenceAttack graphMetabolic network modelAttack graphs; Bio-inspired techniques; Network securityGraph (abstract data type)businessAttack graphsmedia_commondescription
Computer security has recently become more and more important as the world economy dependency from data has kept growing. The complexity of the systems that need to be kept secure calls for new models capable of abstracting the interdependencies among heterogeneous components that cooperate at providing the desired service. A promising approach is attack graph analysis, however the manual analysis of attack graphs is tedious and error prone. In this paper we propose to apply the metabolic network model to attack graphs analysis, using three interacting bio-inspired algorithms: topological analysis, flux balance analysis, and extreme pathway analysis. A developed framework for graph building and simulations as well as an introductory use case are also outlined.
year | journal | country | edition | language |
---|---|---|---|---|
2018-01-01 |