一种改进的网络安全风险随机评估模型

Oni Omoyemi Abimbola, Akinyemi Bodunde Odunola, A. Temitope, G. Aderounmu, Kamagaté Beman Hamidja
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引用次数: 3

摘要

现有的网络安全分析解决方案大多集中在识别威胁和漏洞,并提供适当的防御机制,以提高网络空间网络的鲁棒性。这些解决方案缺乏应对风险影响和进行长期预测的有效能力。本文提出了一种改进的网络空间安全风险评估模型,该模型将有效地预测和减轻风险的后果。对选定网络的实时漏洞进行扫描和分析,并对漏洞的可利用性进行评估。利用吸收马尔可夫链和马尔可夫奖励模型的协同作用,建立了风险评估模型。利用该模型对所选网络的网络安全状态进行分析。利用R- Statistical Package对该模型进行了仿真,并以可靠性和可用性为指标,通过对已有模型的基准测试对其性能进行了评价。结果表明,该模型比现有模型具有更高的可靠性和可用性。这意味着对网络空间安全形势的评估有了显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Stochastic Model for Cybersecurity Risk Assessment
Most of the existing solutions in cybersecurity analysis has been centered on identifying threats and vulnerabilities, and also providing suitable defense mechanisms to improve the robustness of the cyberspace network. These solutions lack effective capabilities to countermeasure the effect of risks and perform long-term prediction. In this paper, an improved risk assessment model for cyberspace security that will effectively predict and mitigate the consequences of risk was developed. Real-time vulnerabilities of a selected network were scanned and analysed and the ease of vulnerability exploitability was assessed. A Risk Assessment Model was formulated using the synergy of Absorbing Markov Chain and Markov Reward Model. The model was utilized to analyse cybersecurity state of the selected network. The proposed model was simulated using R- Statistical Package, and its performance was evaluated by benchmarking with an existing model, using Reliability and Availability as metrics. The result showed that the proposed model has higher reliability and availability over the existing model. This implied that there is a significant improvement in the assessment of security situations in a cyberspace network.
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