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Non-parametric inference of risk measures.

机译:风险度量的非参数推断。

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摘要

Responding to the changes in the insurance environment of the past decade, insurance regulators globally have been revamping the valuation and capital regulations. This thesis is concerned with the design and analysis of statistical inference procedures that are used to implement these new and upcoming insurance regulations, and their analysis in a more general setting toward lending further insights into their performance in practical situations.;The quantitative measure of risk that is used in these new and upcoming regulations is the risk measure known as the Tail Value-at-Risk (T-VaR). In implementing these regulations, insurance companies often have to estimate the T-VaR of product portfolios from the output of a simulation of its cash flows. The distributions for the underlying economic variables are either estimated or prescribed by regulations. In this situation the computational complexity of estimating the T-VaR arises due to the complexity in determining the portfolio cash flows for a given realization of economic variables. A technique that has proved promising in such settings is that of importance sampling. While the asymptotic behavior of the natural non-parametric estimator of T-VaR under importance sampling has been conjectured, the literature has lacked an honest result. The main goal of the first part of the thesis is to give a precise weak convergence result describing the asymptotic behavior of this estimator under importance sampling. Our method also establishes such a result for the natural non-parametric estimator for the Value-at-Risk, another popular risk measure, under weaker assumptions than those used in the literature. We also report on a simulation study conducted to examine the quality of these asymptotic approximations in small samples.;The Haezendonck-Goovaerts class of risk measures corresponds to a premium principle that is a multiplicative analog of the zero utility principle, and is thus of significant academic interest. From a practical point of view our interest in this class of risk measures arose primarily from the fact that the T-VaR is, in a sense, a minimal member of the class. Hence, a study of the natural non-parametric estimator for these risk measures will lend further insights into the statistical inference for the T-VaR. Analysis of the asymptotic behavior of the generalized estimator has proved elusive, largely due to the fact that, unlike the T-VaR, it lacks a closed form expression. Our main goal in the second part of this thesis is to study the asymptotic behavior of this estimator. In order to conduct a simulation study, we needed an efficient algorithm to compute the Haezendonck-Goovaerts risk measure with precise error bounds. The lack of such an algorithm has clearly been noticed in the literature, and has impeded the quality of simulation results. In this part we also design and analyze an algorithm for computing these risk measures. In the process of doing we also derive some fundamental bounds on the solutions to the optimization problem underlying these risk measures. We also have implemented our algorithm on the R software environment, and included its source code in the Appendix.
机译:为了应对过去十年中保险环境的变化,全球的保险监管机构一直在修订估值和资本法规。本文涉及用于执行这些新的和即将颁布的保险法规的统计推断程序的设计和分析,以及在更一般的环境中进行分析的目的,以进一步了解其在实际情况下的表现。在这些新法规和即将颁布的法规中使用的是称为“尾部风险值”(T-VaR)的风险度量。在执行这些规定时,保险公司通常必须根据其现金流量模拟的输出来估计产品组合的T-VaR。基本经济变量的分布是由法规估算或规定的。在这种情况下,由于在给定的经济变量实现下确定投资组合现金流量的复杂性,因此估算T-VaR的计算复杂性增加了。在这种情况下被证明很有希望的技术是重要性采样技术。尽管已经推测了重要抽样下T-VaR的自然非参数估计量的渐近行为,但文献缺乏真实的结果。本文第一部分的主要目的是给出一个精确的弱收敛结果,以描述该估计量在重要性抽样下的渐近行为。在比文献中使用的假设更弱的假设下,我们的方法还为风险价值(一种流行的风险度量)的自然非参数估计量建立了这样的结果。我们还报告了一项模拟研究,以检查小样本中这些渐近近似的质量。; Haezendonck-Goovaerts类风险度量对应于溢价原理,该原理是零效用原理的乘法类似物,因此具有重要意义学术兴趣。从实践的角度来看,我们对此类风险衡量标准的关注主要是由于从某种意义上说,T-VaR是此类风险中的最小成员。因此,对这些风险度量的自然非参数估计量的研究将为T-VaR的统计推断提供更多的见解。事实证明,对广义估计量的渐近行为的分析是难以捉摸的,这主要是由于与T-VaR不同,它缺乏闭合形式的表达。本文第二部分的主要目标是研究该估计量的渐近行为。为了进行仿真研究,我们需要一种有效的算法来计算具有精确误差范围的Haezendonck-Goovaerts风险度量。文献中已明显注意到缺乏这种算法,并已阻碍了仿真结果的质量。在这一部分中,我们还将设计和分析用于计算这些风险度量的算法。在此过程中,我们还得出了针对这些风险度量基础的优化问题的解决方案的一些基本界限。我们还在R软件环境上实现了我们的算法,并将其源代码包含在附录中。

著录项

  • 作者

    Ahn, Jae Youn.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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