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Approximate Uncertainty Modeling in Risk Analysis with Vine Copulas

机译:藤Copulas风险分析中的近似不确定性建模

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摘要

Many applications of risk analysis require us to jointly model multiple uncertain quantities. Bayesian networks and copulas are two common approaches to modeling joint uncertainties with probability distributions. This article focuses on new methodologies for copulas by developing work of Cooke, Bedford, Kurowica, and others on vines as a way of constructing higher dimensional distributions that do not suffer from some of the restrictions of alternatives such as the multivariate Gaussian copula. The article provides a fundamental approximation result, demonstrating that we can approximate any density as closely as we like using vines. It further operationalizes this result by showing how minimum information copulas can be used to provide parametric classes of copulas that have such good levels of approximation. We extend previous approaches using vines by considering nonconstant conditional dependencies, which are particularly relevant in financial risk modeling. We discuss how such models may be quantified, in terms of expert judgment or by fitting data, and illustrate the approach by modeling two financial data sets.
机译:风险分析的许多应用要求我们共同为多个不确定量建模。贝叶斯网络和copulas是用概率分布对联合不确定性建模的两种常用方法。本文通过开发Cooke,Bedford,Kurowica和其他人在葡萄树上的工作,着重于新的科普斯方法,以构建不受某些替代方法(例如多变量高斯科普拉)约束的高维分布的方法。本文提供了基本的近似结果,表明我们可以像使用藤本植物一样接近任何密度。它通过显示如何使用最小信息关联来提供具有如此良好的近似水平的关联类别的参数类别,从而进一步实现了这一结果。我们通过考虑非恒定条件依赖性来扩展使用藤蔓的先前方法,这在财务风险建模中特别重要。我们讨论如何根据专家判断或通过拟合数据来量化此类模型,并通过对两个财务数据集进行建模来说明该方法。

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