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Cyber security risk assessment using an interpretable evolutionary fuzzy scoring system

机译:使用可解释的进化模糊评分系统进行网络安全风险评估

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An efficient and effective security risk assessment benefits a lot on realizing the potential threats changing, uncovering emergency when maintaining cyber security, and maximize utilization of available resource. However, traditional cyber security risk assessments are usually based on knowledge-driven approach which is suffered from demanding lots of proper domain knowledge and time-consuming human interaction to generate assessment model. In this research, aiming to alleviate the efforts taken by domain experts, we propose a novel interpretable evolutionary fuzzy scoring system, which is innovated in data-driven way, for cyber security risk assessing. The design process of the proposed method is elaborately optimized according to three objectives: accurate, compact, and most important, interpretable. Performance of proposed method is evaluated by both well-known machine learning benchmarks and real cyber security risk assessment dataset. Experimental results deliver insights as followings: 1) The delivered real-valued scoring can successfully quantify the degree of cyber security risk, just like the conventional knowledge-driven methods do. 2) The proposed scoring system can be further modified as a wrapper method to making alert, when given system-suggested or human-specified value as cyber risk alert threshold in advance. 3) The derived scoring system with a compact fuzzy rule base can generate interpretable result that depicts clear data distribution to users.
机译:高效而有效的安全风险评估对实现潜在的威胁变化,在维护网络安全时发现紧急情况以及最大程度地利用可用资源有很大帮助。但是,传统的网络安全风险评估通常基于知识驱动的方法,该方法受困于需要大量适当的领域知识和耗时的人机交互以生成评估模型。在本研究中,为了减轻领域专家的工作量,我们提出了一种新颖的可解释的进化模糊评分系统,该系统以数据驱动的方式进行了创新,用于网络安全风险评估。根据三个目标精心设计了所提出方法的设计过程:准确,紧凑,最重要,可解释。通过知名的机器学习基准和真实的网络安全风险评估数据集来评估所提出方法的性能。实验结果提供以下见解:1)所提供的实际价值评分可以成功量化网络安全风险的程度,就像传统的知​​识驱动方法一样。 2)当预先给定系统建议值或人为指定值作为网络风险警报阈值时,可以进一步将建议的计分系统修改为发出警报的包装方法。 3)具有紧凑的模糊规则库的派生评分系统可以生成可解释的结果,该结果描述了向用户的清晰数据分布。

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