限制状态挣值分析对网络安全项目管理决策的影响

Michael Staley
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引用次数: 0

摘要

极限状态挣值管理(LSEVM)提高了项目经理识别网络安全项目性能问题并选择适当纠正措施的能力。极限状态挣值管理(LSEVM)是传统挣值管理(EVM)的演变,它通过对绩效指标的说明性解释,结合了主动管理,为纠正措施的制定提供了洞察力。传统的evm分析无法识别所有可能的性能状态。我们的研究表明,项目经理很难单独从项目分析中识别项目绩效并选择适当的纠正措施。极限状态EVM通过重新设想EVM分析围绕项目绩效的识别而不是简单地计算数学方差的作用来解决这些问题。LSEVM解决方案建立在:a)检查项目s曲线,揭示传统evm分析不能捕获所有项目绩效状态。b)通过添加预算方差(Budget Variance, BV)来捕捉缺失的绩效状态,从而增强evm分析方法。这种差异被定义为计划价值和实际成本之间的差异。由此,我们可以建立EVM方差CV、BV和SV之间的数学关系。c)证明通过添加该BV捕获的总潜在项目绩效状态的数量为27:三个方差,每个方差有三个结果(+,0,-)。d)将性能状态的数量减少到满足上述数学关系的(SV, CV, BV)的13种组合。e)按常见失效模式对13种性能状态进行分组,定义7种极限状态。f)将失效模式映射为一套适当的纠正措施。在2012年秋季,极限状态EVM的介绍被添加到PMP®考试准备课程中。进行了统计分析,以确定学习收益是统计上显著的还是偶然的问题。采用配对双尾t检验,置信区间为95% (P= 0.025),向258名公司项目经理提供了11个评估主题,作为测试前和测试后评估工具的一部分。p值表明平均学习收益在每个类别中都具有统计学意义。在应用EVM问题中观察到更大的收益,并且达到或勉强达到将EVM应用于现实世界问题的能力门槛。LSEVM显著提高了项目经理识别网络安全项目绩效和选择适当纠正措施的能力。研究的项目经理能够做出更好的数据驱动决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Limit state earned value analysis impact on network security project management decisions
Limit State Earned Value Management (LSEVM) has increased project managers' abilities to identify network security project performance issues and select appropriate corrective actions. Limit State Earned Value Management (LSEVM) is an evolution of traditional Earned Value Management (EVM) that incorporates active management through prescriptive interpretation of performance indicators that provides insight to the development of corrective actions. Traditional EVM-analysis does not have the capacity to identify all possible performance states. Our study indicates that project managers struggle to identify project performance and select appropriate corrective actions from project analysis alone. Limit State EVM solves these issues by re imagining the role of EVM-analysis around the identification of project performance and not simply the computation of mathematical variances. The LSEVM solution is built on: a) Inspection of project S-curves, revealing that traditional EVM-analysis does not capture all project performance states. b) Enhancement of EVM-analysis methodology by adding a Budget Variance (BV) to capture missing performance states. This variance is defined as the difference between planned value and actual cost. From this, we can create a mathematical relationship between the EVM variances CV, BV, and SV. c) Demonstrating that the number of total potential project performance states captured by the addition of this BV is 27: three variances with three results each (+,0,-). d) Reducing the number of performance states to only those 13 combinations of (SV, CV, BV) that satisfy the mathematical relationship above. e) Grouping the 13 performance states by common failure modalities to define 7 Limit States. f) Mapping the failure modalities to a suite of appropriate corrective actions. In the Fall of 2012, an introduction to Limit State EVM was added to a PMP® Exam prep course. A statistical analysis was performed to determine if the learning gains were statistically significant or a matter of chance. Eleven (11) assessment topics were presented to 258 corporate project managers as part of a pre-test and post-test assessment instrument using a paired, two tailed t-test with a confidence interval of 95% (P=.025). The p-values indicated that the mean learning gains were statistically significant in every category. Much larger gains were observed in the applied EVM questions and met or marginally met the threshold of competency applying EVM to real world problems. LSEVM significantly enhances a project manager's ability to identify network security project performance and select appropriate corrective actions. The project managers studied were able to make better data-driven decisions.
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