The Gumbel Copula Method for Estimating Value at Risk: Evidence from Telecommunication Stocks in Indonesia during the COVID-19 Pandemic


Georgina Maria Tinungki, - and Siswanto Siswanto, - and Alimatun Najiha, - The Gumbel Copula Method for Estimating Value at Risk: Evidence from Telecommunication Stocks in Indonesia during the COVID-19 Pandemic. J. Risk Financial Manag. 2023, 16, 424. https://doi.org/10.3390/jrfm16100424.

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Abstract (Abstrak)

The COVID-19 pandemic has had a substantial and far-reaching impact on global eco- nomic growth, extending its effects to Indonesia as well. Various sectors have witnessed a decline in stock returns as a consequence. Interestingly, the telecommunications sector has bucked this trend by experiencing an increase in stock returns, defying the negative implications of the pan- demic. The relationship between returns and risk is inherently intertwined, necessitating a metic- ulous risk assessment. In response to this need, the Value at Risk (VaR) method has emerged as a rapidly growing and widely adopted risk measurement tool. Among the techniques employed for VaR estimation, the Monte Carlo simulation stands out due to its flexibility and comprehensiveness in accommodating factors such as time variance, volatility, returns, fat tails, and extreme scenarios. The Gumbel copula method, known for its heightened sensitivity to high-risk events, is utilized for VaR estimation on abnormal stock returns. This study aims to quantify the Value at Risk by lev- eraging the estimated Gumbel copula parameter for the return on the shares of PT. Indosat Ooredoo Hutchison Tbk, and PT. Smartfren Telecom Tbk during the COVID-19 pandemic. At a 90% confidence level, the VaR is determined to be 7.6%. Notably, this estimate closely aligns with the actual values, underscoring the reliability of the VaR estimation conducted using the Gumbel copula parameter estimator. Therefore, this model serves as a robust reference, particularly suita- ble when dealing with investment return data that deviate from the normal distribution, while considering the unique stock return characteristics within each dataset.

Item Type: Article
Subjects: Q Science > QA Mathematics
Depositing User: - Andi Anna
Date Deposited: 26 Sep 2023 05:14
Last Modified: 26 Sep 2023 05:14
URI: http://repository.unhas.ac.id:443/id/eprint/29167

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