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Advanced Expected Tail Loss Measurement and Quantification for the Moroccan All Shares Index Portfolio

机译:摩洛哥全部股票指数投资组合的高级预期尾巴损失计量和量化

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In this paper, we have analyzed and tested the Expected Tail Loss (ETL) approach for the Value at Risk (VaR) on the Moroccan stock market portfolio. We have compared the results with the general approaches for the standard VaR, which has been the most suitable method for Moroccan stock investors up to now. These methods calculate the maximum loss that a portfolio is likely to experience over a given time span. Our work advances those modeling methods with supplementation by inputs from the ETL approach for application to the Moroccan stock market portfolio—the Moroccan All Shares Index (MASI). We calculate these indicators using several methods, according to an easy and fast implementation with a high-level probability and with accommodation for extreme risks; this is in order to numerically simulate and study their behavior to better understand investment opportunities and, thus, form a clear view of the Moroccan financial landscape.
机译:在本文中,我们分析并测试了摩洛哥股票市场投资组合的预期尾巴损失(ETL)方法的风险价值(VaR)。我们将结果与标准VaR的一般方法进行了比较,标准VaR到目前为止是摩洛哥股票投资者最合适的方法。这些方法计算投资组合在给定时间范围内可能遭受的最大损失。我们的工作通过将ETL方法的输入补充到摩洛哥股票市场组合(摩洛哥所有股票指数,MASI)中来补充这些建模方法。我们采用几种方法来计算这些指标,方法是轻松,快速地实施,且概率较高,并且可以承受极端风险;这是为了对他们的行为进行数值模拟和研究,以更好地了解投资机会,从而清晰地了解摩洛哥的金融前景。

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