基于广义偏差的离散事件模拟风险评估

Arne Koors
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引用次数: 2

摘要

本文引入了一个受定量金融学启发的广义偏差概念。波动性或下行风险等标准风险度量被分解为五个通用子函数,用于参考、选择、惩罚、归一化和重新量维。这种方法的优点是它的灵活性,允许建模广泛的风险感知在离散事件仿真的众多应用领域。一些进一步的风险类型,如上行风险、外部风险、过渡风险、临界状态风险或反向运动风险,可以作为广义偏差的特殊情况进行描述和嵌入。这些风险类型是根据动机、相关广义偏差成分的说明、应用类别的描述、应用示例和图形说明来呈现的。特别讨论了确定参考状态、参考选择和惩罚函数的各种选项。概述了离散事件仿真框架DESMO-J中广义偏差度量的实现特点。此外,还描述了可能的结构扩展以及其他可实现的风险类型,表明了该方法的进一步应用潜力和灵活范围。本文建议在离散事件模拟领域中,通过额外采用本文所述的广义偏差风险度量来补充描述性标准统计,以方便评估各种应用领域中不期望的模拟动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Risk in Discrete Event Simulation by Generalized Deviation
This paper introduces a generalized deviation concept, inspired by quantitative finance. Standard risk metrics like volatility or downside risk are deconstructed into five general sub-functions for reference, selection, penalization, normalization and re-dimensioning. The advantage of this approach is its flexibility, allowing modeling a wide range of risk perceptions in numerous application fields of discrete event simulation. Several further risk types like upside risk, outside risk, transition risk, critical state risk or countermovement risk are describable and embeddable as special cases of generalized deviation. These risk types are presented with respect to motivation, specification of relevant generalized deviation components, description of application classes, application examples and graphical illustrations. In particular, various options for determining reference states, reference selection and penalty functions are discussed. Implementation features of the generalized deviation metric in the discrete event simulation framework DESMO-J are outlined. Moreover, possible structural extensions as well as additionally implementable risk types are delineated, indicating further application potential and the flexible scope of this approach. It is proposed to complement descriptive standard statistics in discrete event simulation domains by additionally employing risk measurement in terms of generalized deviation as explicated here, to facilitate assessment of undesired simulation dynamics in various application fields.
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