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Comparison of Evolutionary Techniques for Value-at-Risk Calculation

机译:风险价值计算的进化技术比较

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The Value-at-Risk (VaR) approach has been used for measuring and controlling the market risks in financial institutions. Studies show that the t-distribution is more suited to representing the financial asset returns in VaR calculations than the commonly used normal distribution. The frequency of extremely positive or extremely negative financial asset returns is higher than that is suggested by normal distribution. Such a leptokurtic distribution can better be approximated by a t-distribution. The aim of this study is to asses the performance of a real coded Genetic Algorithm (GA) with Evolutionary Strategies (ES) approach for Maximum Likelihood (ML) parameter estimation. Using Monte Carlo (MC) simulations, we compare the test results of VaR simulations using the t-distribution, whose optimal parameters are generated by the Evolutionary Algorithms (EAs), to that of the normal distribution. It turns out that the VaR figures calculated with the assumption of normal distribution significantly understate the VaR figures computed from the actual historical distribution at high confidence levels. On the other hand, for the same confidence levels, the VaR figures calculated with the assumption of t-distribution are very close to the results found using the actual historical distribution. Finally, in order to speed up the MC simulation technique, which is not commonly preferred in financial applications due to its time consuming algorithm, we implement a parallel version of it.
机译:风险价值(VaR)方法已用于度量和控制金融机构的市场风险。研究表明,与常用的正态分布相比,t分布更适合表示VaR计算中的金融资产收益。金融资产收益极正或极负的发生频率高于正态分布所建议的频率。此类teptokurtic分布可以通过t分布更好地近似。这项研究的目的是通过最大可能(ML)参数估计的进化策略(ES)方法评估真实编码遗传算法(GA)的性能。使用蒙特卡洛(MC)模拟,我们将使用t分布的VaR模拟的测试结果与正态分布进行比较,t分布的最佳参数是由进化算法(EA)生成的。事实证明,在正态分布假设下计算的VaR值大大低估了在高置信度下从实际历史分布计算出的VaR值。另一方面,对于相同的置信度,假设t分布计算的VaR值非常接近使用实际历史分布得出的结果。最后,为了加速MC仿真技术(由于其耗时的算法,在金融应用中通常不建议使用它),我们实现了它的并行版本。

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