首页> 外文期刊>International Journal of Disaster Risk Science >Integrating Systemic Risk and Risk Analysis Using Copulas
【24h】

Integrating Systemic Risk and Risk Analysis Using Copulas

机译:使用Copulas集成系统风险和风险分析

获取原文
       

摘要

Systemic risk research is gaining traction across diverse disciplinary research communities, but has as yet not been strongly linked to traditional, well-established risk analysis research. This is due in part to the fact that systemic risk research focuses on the connection of elements within a system, while risk analysis research focuses more on individual risk to single elements. We therefore investigate how current systemic risk research can be related to traditional risk analysis approaches from a conceptual as well as an empirical point of view. Based on Sklar’s Theorem, which provides a one-to-one relationship between multivariate distributions and copulas, we suggest a reframing of the concept of copulas based on a network perspective. This provides a promising way forward for integrating individual risk (in the form of probability distributions) and systemic risk (in the form of copulas describing the dependencies among such distributions) across research domains. Copulas can link continuous node states, characterizing individual risks, with a gradual dependency of the coupling strength between nodes on their states, characterizing systemic risk. When copulas are used for describing such refined coupling between nodes, they can provide a more accurate quantification of a system’s network structure. This enables more realistic systemic risk assessments, and is especially useful when extreme events (that occur at low probabilities, but have high impacts) affect a system’s nodes. In this way, copulas can be informative in measuring and quantifying changes in systemic risk and therefore be helpful in its management. We discuss the advantages and limitations of copulas for integrative risk analyses from the perspectives of modeling, measurement, and management.
机译:系统性风险研究在各种学科研究界中越来越受欢迎,但尚未与传统的,完善的风险分析研究紧密相关。这部分是由于以下事实,即系统风险研究着重于系统内各个要素之间的联系,而风险分析研究则更侧重于单个要素与单个要素之间的风险。因此,我们从概念和经验的角度研究了当前的系统风险研究如何与传统的风险分析方法相关。基于Sklar定理(该定理提供了多元分布和copula之间的一对一关系),我们建议基于网络角度重新定义copula概念。这为跨研究领域整合单个风险(以概率分布的形式)和系统性风险(以描述这种分布之间的依赖性的copula形式)提供了一种有前途的方法。 Copulas可以将连续的节点状态链接起来,从而表征单个风险,而节点之间的耦合强度逐渐依赖于它们的状态,从而表征系统性风险。当copula用于描述节点之间的这种精细耦合时,它们可以提供对系统网络结构的更准确量化。这样可以进行更现实的系统风险评估,并且在极端事件(发生概率较低但影响较大)影响系统节点时特别有用。通过这种方式,copulas在测量和量化系统性风险的变化方面可以提供很多信息,因此有助于其管理。我们从建模,度量和管理的角度讨论了copula在综合风险分析中的优势和局限性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号