PROOF
Print ISSN: 2944-9162, E-ISSN: 2732-9941 An Open Access International Journal of Applied Science and Engineering
Volume 2, 2022
The Use of Statistic Complexity for Security and Performance Analysis in Autonomic Component Ensembles
Authors: , , ,
Abstract: The paper proposes a new technique for detecting malware threats in autonomic component ensembles. The technique is based on the statistic complexity metrics, which relate objects to random variables and (unlike other complexity measures considering objects as individual symbol strings) are ensemble based. This transforms the classic problem of assessing the complexity of an object into the realm of statistics. The proposed technique requires implementation of the process X (which generates ‘healthy’ flows containing no malware threats) and objects generated by the actual (possible infected) process Y. The component flows files are used as objects of the processes X and Y. The result of the proposed procedure gives us the distribution of probabilities of malware infection among autonomic components. The possibility to use the results obtained to perform quantitative probabilistic verification and analysis of ASEs using the probabilistic model checking tool PRISM is demonstrated.
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Keywords: cloud computing, autonomic component, autonomic ensemble, complexity measure, statistic complexity, traffic flows, malware, response time, performance, service level agreement
Pages: 59-67
DOI: 10.37394/232020.2022.2.8