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Incident prioritisation using analytic hierarchy process (AHP): Risk Index Model (RIM)

机译:使用层次分析法(AHP)进行事件优先级划分:风险指数模型(RIM)

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摘要

The landscape of security threats continues to evolve, with attacks becoming more serious and the number of vulnerabilities rising. For these threats to be managed, many security studies have been undertaken in recent years, mainly focusing on improving detection, prevention and response efficiency. This paper proposes an incident prioritisation model, the Risk Index Model (RIM), which is based on risk assessment and the analytic hierarchy process. For incidents to be prioritised, the model uses indicators, such as criticality, as decision factors to calculate incidents' risk index. The model also adopts different strategies to enhance the prioritisation process. To evaluate the model, two stages of evaluation study were conducted. The first stage aims to validate the model by comparing its results with the Common Vulnerability Scoring System and Snort. The second stage aims to enhance RIM by analysing the effect of using different strategies in the model. The experimental results in the first stage have shown that 100% of incidents could be rated with RIM, compared with only 17.23% with the Common Vulnerability Scoring System. The experiments in the second stage have shown significant changes in the resultant risk index as well as some of the top-priority incidents. Copyright © 2012 John Wiley & Sons, Ltd.
机译:安全威胁的格局在不断发展,攻击变得更加严重,漏洞数量也在增加。为了应对这些威胁,近年来已进行了许多安全研究,主要集中在提高检测,预防和响应效率上。本文提出了一个基于风险评估和层次分析法的事件优先级排序模型,即风险指数模型(RIM)。对于要确定优先级的事件,该模型使用关键程度等指标作为决策因素来计算事件的风险指数。该模型还采用了不同的策略来增强优先级排序过程。为了评估模型,进行了两个阶段的评估研究。第一阶段旨在通过将模型结果与“通用漏洞评分系统”和“ Snort”进行比较来验证模型。第二阶段旨在通过分析模型中使用不同策略的效果来增强RIM。第一步的实验结果表明,RIM可以对100%的事件进行评级,而Common Vulnerability Scoring System的评级仅为17.23%。第二阶段的实验表明,最终风险指数以及一些最重要的事件均发生了重大变化。版权所有©2012 John Wiley&Sons,Ltd.

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