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How does the choice of Value-at-Risk estimator influence asset allocation decisions?

机译:有价值 - 风险估算者如何影响资产分配决策?

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摘要

Considering the growing need for managing financial risk, Value-at-Risk (VaR) prediction and portfolio optimisation with a focus on VaR have taken up an important role in banking and finance. Motivated by recent results showing that the choice of VaR estimator does not crucially influence decision-making in certain practical applications (e.g. in investment rankings), this study analyses the important question of how asset allocation decisions are affected when alternative VaR estimation methodologies are used. Focusing on the most popular, successful and conceptually different conditional VaR estimation techniques (i.e. historical simulation, peak over threshold method and quantile regression) and the flexible portfolio model of Campbell et al. [J. Banking Finance. 2001, 25(9), 1789-1804], we show in an empirical example and in a simulation study that these methods tend to deliver similar asset weights. In other words, optimal portfolio allocations appear to be not very sensitive to the choice of VaR estimator. This finding, which is robust in a variety of distributional environments and pre-whitening settings, supports the notion that, depending on the specific application, simple standard methods (i.e. historical simulation) used by many commercial banks do not necessarily have to be replaced by more complex approaches (based on, e.g. extreme value theory).
机译:考虑到管理财务风险的日益增长,风险价值(VAR)预测和投资组合优化,重点在VAR上占据了银行和金融中的重要作用。最近的结果表明,var估计器的选择不关心在某些实际应用中的决策(例如,在投资排名)中,这项研究分析了如何在使用替代var估计方法时如何影响资产分配决策的重要问题。专注于最流行,成功和概念上不同的条件var估计技术(即历史模拟,峰值阈值方法和分量回归)以及Campbell等人的柔性产品组合模型。 [J.银行金融。 2001,25(9),1789-1804],我们在一个经验的例子中显示,在模拟研究中,这些方法倾向于提供类似的资产重量。换句话说,最佳组合分配似乎对var估计器的选择不太敏感。这一发现在各种分布环境和预美白设置中具有强大的发现,支持概念,根据特定应用,许多商业银行使用的简单标准方法(即历史模拟)不一定必须被更换更复杂的方法(基于例如极限理论)。

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