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首页> 外文期刊>Annals of Operations Research >Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation
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Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation

机译:计算CVAR和BPOE以应用于产品组合优化和密度估计的常见概率分布

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Conditional value-at-risk (CVaR) and value-at-risk, also called the superquantile and quantile, are frequently used to characterize the tails of probability distributions and are popular measures of risk in applications where the distribution represents the magnitude of a potential loss. buffered probability of exceedance (bPOE) is a recently introduced characterization of the tail which is the inverse of CVaR, much like the CDF is the inverse of the quantile. These quantities can prove very useful as the basis for a variety of risk-averse parametric engineering approaches. Their use, however, is often made difficult by the lack of well-known closed-form equations for calculating these quantities for commonly used probability distributions. In this paper, we derive formulas for the superquantile and bPOE for a variety of common univariate probability distributions. Besides providing a useful collection within a single reference, we use these formulas to incorporate the superquantile and bPOE into parametric procedures. In particular, we consider two: portfolio optimization and density estimation. First, when portfolio returns are assumed to follow particular distribution families, we show that finding the optimal portfolio via minimization of bPOE has advantages over superquantile minimization. We show that, given a fixed threshold, a single portfolio is the minimal bPOE portfolio for an entire class of distributions simultaneously. Second, we apply our formulas to parametric density estimation and propose the method of superquantiles (MOS), a simple variation of the method of moments where moments are replaced by superquantiles at different confidence levels. With the freedom to select various combinations of confidence levels, MOS allows the user to focus the fitting procedure on different portions of the distribution, such as the tail when fitting heavy-tailed asymmetric data.
机译:有条件的值 - 风险(CVAR)和价值风险,也称为SuperQualile和Smalile,经常用于表征概率分布的尾部,并且是分布代表潜在幅度的应用中的流行风险措施损失。缓冲的超标概率(BPOE)是最近引入的尾部表征,这是CVAR的倒数,就像CDF一样是米体的倒数。这些数量可以证明是对各种风险厌恶参数工程方法的基础非常有用。然而,它们的使用通常由于缺乏众所周知的闭合方程来计算用于常用概率分布的这些数量的众所周知的闭合方程。在本文中,我们为各种共同的单变量概率分布推导出超静脉和BPOE的公式。除了在单一参考中提供有用的集合,我们使用这些公式将Superquallile和BPoE合并到参数程序中。特别是,我们考虑二:组合优化和密度估计。首先,当假设投资组合返回遵循特定的分销系列时,我们证明了通过最小化BPOE的最佳组合具有优势,具有超微化最小化的优点。我们认为,给定固定阈值,单个投资组合是同时为整个分布的最小BPOE产品组合。其次,我们将公式应用于参数密度估计并提出了超刻膜物(MOS)的方法,是在不同置信水平的超刻膜替换时刻所取代的时刻方法的简单变化。利用自由来选择各种置信席位的组合,MOS允许用户将配件过程聚焦在分布的不同部分上,例如尾尾的不对称数据时尾部。

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