Numerous analysis methods for quantitative attack tree analysis have been proposed. These algorithms compute relevant security metrics, i.e. performance indicators that quantify how good the security of a system is, such as the most likely attack, the cheapest, or the most damaging one. paper classifies attack trees in two dimensions: proper trees vs. directed acyclic graphs (i.e. with shared subtrees); and static vs. dynamic gates. For each class, we propose novel algorithms that work over a generic attribute domain, encompassing a large number of concrete security metrics defined on the attack tree semantics. We also analyse the computational complexity of our methods.
Efficient Algorithms for Quantitative Attack Tree Analysis / Budde, Carlos E.; Stoelinga, Mariëlle. - ELETTRONICO. - (2021), pp. 1-15. (Intervento presentato al convegno CSF 2021: 34th IEEE Computer Security Foundations Symposium tenutosi a Online nel 21-25 June 2021) [10.1109/CSF51468.2021.00041].
Efficient Algorithms for Quantitative Attack Tree Analysis
Carlos E. Budde;
2021-01-01
Abstract
Numerous analysis methods for quantitative attack tree analysis have been proposed. These algorithms compute relevant security metrics, i.e. performance indicators that quantify how good the security of a system is, such as the most likely attack, the cheapest, or the most damaging one. paper classifies attack trees in two dimensions: proper trees vs. directed acyclic graphs (i.e. with shared subtrees); and static vs. dynamic gates. For each class, we propose novel algorithms that work over a generic attribute domain, encompassing a large number of concrete security metrics defined on the attack tree semantics. We also analyse the computational complexity of our methods.File | Dimensione | Formato | |
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