混合RMS风险管理的意外价值

R. Goeres
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引用次数: 0

摘要

如果印度洋沿岸国家有紧急预警系统,节礼日海啸的受害者人数本可以大大减少;缺乏这样一个系统是由于成本效益分析确定了缓解威胁的资源分配优先次序。几乎所有的定量威胁评估和风险管理程序都使用算术方法和期望值来进行分析和资源优先排序和分配。尽管这些方法在分布的中心工作得相当好,但它们低估了处理分布尾部威胁(如罕见但致命的威胁和无处不在但无害的事件)所需的资源;它们还倾向于将资源过度分配给威胁和影响相对较低的风险。对当前定量威胁评估和缓解方法的粗略调查解释了其结果可能不合适的原因,以及将n维威胁和影响组成部分汇总为有效风险水平(ERL)的均方根(RMS)方法如何产生符合风险管理和资源分配目的预期的结果。描述了派生连续威胁因素函数的动机和过程,并将其集成到这些混合RMS (HRMS)聚合技术中,这些技术可用于构建用于预算证明的安全投资回报率(SROI)度量。这些方法也可扩展到不确定性编程应用(如模糊逻辑)和协调信息安全专家之间的意见分歧。当与诸如多维缩放之类的运筹学技术相结合时,这些方法可以形成开发紧急标准信息保证评估器的基础
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Unexpected Value of Hybrid RMS Risk Management
The number of Boxing Day Tsunami victims could have been dramatically reduced had there been an emergency warning system in the countries bordering the Indian Ocean; the lack of such a system was due to cost-benefit analyses that set threat-mitigation resource-allocation priorities. Virtually all quantitative threat assessment and risk management programs use arithmetic means and expected values for analysis and resource prioritization and allocation. Although these methods work reasonably well around the centers of distributions, they underestimate the resources necessary to address threats from the tails of the distributions such as rare-but-deadly threats and ubiquitous-but-innocuous events; they also tend to over-allocate resources to relatively low-threat and low-impact risks. A cursory survey of current quantitative threat assessment and mitigation methodologies explains why their results may be inappropriate and how root-mean-square (RMS) methods for aggregating n-dimensional threat and impact components into effective risk levels (ERL) yields results that correspond to expectations for risk management and resource-allocation purposes. Motivations and procedures for deriving continuous threat-factor functions are described and integrated into these hybrid RMS (HRMS) aggregation techniques, which may be used to construct security return-on-investment (SROI) metrics for budget justification. These methods are also extensible to uncertain-programming applications (e.g. fuzzy logic) and reconciling differences of opinions among information security experts. When combined with operations research techniques such as multidimensional scaling, these methods may form the basis for developing the Emergent Standard Information Assurance Assessor
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