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Bayesian Value-at-Risk with product partition models

机译:产品划分模型的贝叶斯风险价值

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摘要

In this paper we propose a novel Bayesian methodology for Value-at-Risk computation based on parametric Product Partition Models. Value-at-Risk is a standard tool for measuring and controlling the market risk of an asset or portfolio, and is also required for regulatory purposes. Its popularity is partly due to the fact that it is an easily understood measure of risk. The use of Product Partition Models allows us to remain in a Normal setting even in the presence of outlying points, and to obtain a closed-form expression for Value-at-Risk computation. We present and compare two different scenarios: a product partition structure on the vector of means and a product partition structure on the vector of variances. We apply our methodology to an Italian stock market data set from Mib30. The numerical results clearly show that Product Partition Models can be successfully exploited in order to quantify market risk exposure. The obtained Value-at-Risk estimates are in full agreement with Maximum Likelihood approaches, but our methodology provides richer information about the clustering structure of the data and the presence of outlying points.
机译:在本文中,我们提出了一种新的基于参数产品划分模型的贝叶斯风险价值计算方法。风险价值是衡量和控制资产或投资组合的市场风险的标准工具,也是监管目的所必需的。它的受欢迎程度部分是由于它是一种易于理解的风险度量。产品分区模型的使用使我们即使在存在异常点的情况下也可以保持正常设置,并获得风险价值计算的闭式表达式。我们提出并比较了两种不同的情况:均值向量的乘积划分结构和方差向量的乘积划分结构。我们将我们的方法应用于来自Mib30的意大利股市数据集。数值结果清楚地表明,可以成功利用产品划分模型来量化市场风险敞口。所获得的风险价值估计与最大似然法完全一致,但是我们的方法提供了有关数据的聚类结构和外围点的存在的更丰富的信息。

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