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Applying the Partitioned Multiobjective Risk Method (PMRM) to Portfolio Selection

机译:将分区多目标风险方法(PMRM)应用于投资组合选择

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The analysis of risk-return tradeoffs and their practical applications to portfolio analysis paved the way for Modern Portfolio Theory (MPT), which won Harry Markowitz a 1992 Nobel Prize in Economics. A typical approach in measuring a portfolio's expected return is based on the historical returns of the assets included in a portfolio. On the other hand, portfolio risk is usually measured using volatility, which is derived from the historical variance-covariance relationships among the portfolio assets. This article focuses on assessing portfolio risk, with emphasis on extreme risks. To date, volatility is a major measure of risk owing to its simplicity and validity for relatively small asset price fluctuations. Volatility is a justified measure for stable market performance, but it is weak in addressing portfolio risk under aberrant market fluctuations. Extreme market crashes such as that on October 19,1987 ("Black Monday") and catastrophic events such as the terrorist attack of September 11, 2001 that led to a four-day suspension of trading on the New York Stock Exchange (NYSE) are a few examples where measuring risk via volatility can lead to inaccurate predictions. Thus, there is a need for a more robust metric of risk. By invoking the principles of the extreme-risk-analysis method through the partitioned multiobjective risk method (PMRM), this article contributes to the modeling of extreme risks in portfolio performance. A measure of an extreme portfolio risk, denoted by f_4, is defined as the conditional expectation for a lower-tail region of the distribution of the possible portfolio returns. This article presents a multiobjective problem formulation consisting of optimizing expected return and f_4, whose solution is determined using Evolver-a software that implements a genetic algorithm. Under business-as-usual market scenarios, the results of the proposed PMRM portfolio selection model are found to be compatible with those of the volatility-based model. However, under extremely unfavorable market conditions, results indicate that f_4 can be a more valid measure of risk than volatility.
机译:风险收益权衡的分析及其在投资组合分析中的实际应用为现代投资组合理论(MPT)铺平了道路。现代投资组合理论(MPT)为哈里·马科维兹(Harry Markowitz)赢得了1992年诺贝尔经济学奖。衡量投资组合预期收益的典型方法是基于投资组合中所包含资产的历史收益。另一方面,通常使用波动率来衡量投资组合风险,该波动率是从投资组合资产之间的历史方差-协方差关系得出的。本文重点介绍评估投资组合风险,重点是极端风险。迄今为止,由于波动率相对较小的资产价格波动具有简单性和有效性,因此波动率是主要的风险度量。波动率是稳定市场表现的合理措施,但在异常的市场波动下解决投资组合风险时能力较弱。诸如1987年10月19日(“黑色星期一”)这样的极端市场崩盘和诸如导致2001年9月11日恐怖袭击导致纽约证券交易所(NYSE)停牌四天之类的灾难性事件是:通过波动率衡量风险可能导致不正确的预测的一些示例。因此,需要一种更可靠的风险度量。通过使用分区多目标风险方法(PMRM)调用极端风险分析方法的原理,本文有助于对投资组合绩效中的极端风险进行建模。用f_4表示的极端投资组合风险的度量被定义为对可能的投资组合收益分布的低尾区域的条件期望。本文提出了一个由优化预期收益和f_4组成的多目标问题表述,其解决方案是使用实现遗传算法的Evolver软件确定的。在一切照旧的市场情况下,建议的PMRM投资组合选择模型的结果与基于波动率的模型的结果兼容。但是,在极其不利的市场条件下,结果表明f_4比起波动率更有效地衡量风险。

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