ESTIMASI CVAR PADA PORTOFOLIO SAHAM MENGGUNAKAN METODE GJR-EVT DENGAN PENDEKATAN D-VINE COPULA

D. Maulana, K. Dharmawan, I. G. A. M. Srinadi
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Abstract

Risk measure using Conditional Value at Risk can be calculate if values that exceeds the p-quantile is known in VaR. The models used to accommodate characteristics of the stock portfolio in this research are EVT-GARCH-D-vine copula and EVT-GJR-D-vine copula so the performance of these two models can be compared. A comparison of the performance of the EVT-GARCH-D-vine copula and EVT-GJR-D-vine copula models can be seen from the Kupiec test backtesting process. Exceeded value Kupiec Test on CVaR 99% is 2, CVaR 95% is 6, and CVaR 90% is 13 for AR(1)-GARCH-t(1,1)-GPD and CVaR 99% is 3, CVaR 95% is 7, and CVaR 90% is 13 for AR(1)-GJR-t(1,1)-GPD. The Kupiec test describes the estimated risk value of CVaR running well with the value of the entire model above the significant level of ? = 0.05 so as to provide a conclusion of risk estimates considered feasible.
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PORTOFOLIO的CVAR估计涉及COPULA-VINE决策时的GJR-EVT方法
如果VaR中已知超过p分位数的值,则可以使用条件风险值来计算风险度量。本研究中用于适应股票投资组合特征的模型是EVT-GARCH-D-vine copula和EVT-GJR-D-vine copura,因此可以比较这两个模型的性能。从Kupiec测试回溯测试过程中可以看出EVT-GARCH-D-葡萄树copula和EVT-GJR-D-葡萄树Copura模型的性能比较。AR(1)-GARCH-t(1,1)-GPD的CVaR 99%的Kupiec试验超标值为2,CVaR 95%为6,CVaR90%为13,AR(1。Kupiec检验描述了CVaR运行良好的估计风险值,整个模型的值高于显著水平?=0.05,从而提供被认为可行的风险估计的结论。
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