Investment Modelling Using Value at Risk Bayesian Mixture Modelling Approach and Backtesting to Assess Stock Risk

B. Miftahurrohmah, Catur Wulandari, Y. S. Dharmawan
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引用次数: 1

Abstract

Background: Stock investment has been gaining momentum in the past years due to the development of technology. During the pandemic lockdown, people have invested more. One the one hand, stock investment has high potential profitability, but on the other, it is equally risky. Therefore, a value at risk (VaR) analysis is needed. One approach to calculate VaR is by using the Bayesian mixture model, which has been proven to be able to overcome heavy-tailed cases. Then, the VaR’s accuracy needs to be tested, and one of the ways is by using backtesting, such as the Kupiec test. Objective : This study aims to determine the VaR model of PT NFC Indonesia Tbk (NFCX) return data using Bayesian mixture modelling and backtesting. On a practical level, this study can provide information about the potential risks of investing that is grounded in empirical evidence. Methods : The data used was NFCX data retrieved from Yahoo Finance, which was then modelled with a mixture model based on the normal and Laplace distributions. After that, the VaR accuracy was calculated and then tested by using backtesting. Results : The test results showed that the VaR with the mixture Laplace autoregressive (MLAR) approach (2;[2],[4]) was accurate at 5% and 1% quantiles while mixture normal autoregressive MNAR (2;[2],[2,4]) was only accurate at 5% quantiles. Conclusion : The better performing NFCX VaR model for this study based on backtesting using Kupiec test is MLAR(2;[2],[4]).
利用风险价值贝叶斯混合建模方法和回溯测试评估股票风险的投资建模
背景:近年来,由于科技的发展,股票投资势头强劲。在疫情封锁期间,人们投入了更多。一方面,股票投资具有很高的潜在盈利能力,但另一方面,它同样具有风险。因此,需要进行风险值(VaR)分析。计算VaR的一种方法是使用贝叶斯混合模型,该模型已被证明能够克服重尾情况。然后,需要对VaR的准确性进行测试,其中一种方法是使用回测,例如Kupiec测试。目的:利用贝叶斯混合模型和回验方法,确定PT NFC Indonesia Tbk (NFCX)回归数据的VaR模型。在实践层面上,本研究可以提供基于经验证据的投资潜在风险信息。方法:使用的数据是从雅虎财经检索到的NFCX数据,然后使用基于正态分布和拉普拉斯分布的混合模型进行建模。在此基础上,计算VaR的准确性,并通过回测进行检验。结果:检验结果表明,混合拉普拉斯自回归(MLAR)方法(2;[2],[4])的VaR在5%和1%分位数下准确,而混合正态自回归MNAR(2;[2],[2,4])仅在5%分位数下准确。结论:基于Kupiec检验的回测,本研究中表现较好的NFCX VaR模型是MLAR(2;[2],[4])。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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