Determination of VaR on BBRI Stocks and BMRI Stocks Using the ARIMA-GARCH Model

https://doi.org/10.47194/orics.v2i3.178

Authors

Keywords:

Risk, ARIMA, GARCH, VaR

Abstract

Stocks are investment instruments that are much in demand by investors as a basis in financial storage. Return and risk are the most important things in investing. Return is a complete summary of investment and the return series is easier to handle than the price series. The movement of risk of loss is obtained from stock investments with profits. One way to calculate risk is value-at-risk. The movement of stocks is used to form a time series so that the calculation of risk can use time series. The purpose of this study was to find out the Value-at-Risk value of BBRI and BMRI stock using the ARIMA-GARCH model. The data used in this study was the daily closing price for 3 years. The time series method used is the Autoregressive Integrated Moving Average (ARIMA)-Generalized Autoregressive Conditional Heteroscedastic (GARCH) model. The stage of analysis is to determine the prediction of stock price movements using the ARIMA model used for the mean model and the GARCH model is used for volatility models. The average value and variants obtained from the model are used to calculate value-at-risk in BBRI and BMRI stock. The results obtained are the ARIMA(3,0,3)-GARCH(1,1) and ARIMA(2,0,2)-GARCH(1,1) model so with a significance level of 5% obtained Value-at-Risk of 0.04058 to BBRI stock and 0.10167 to BMRI stock.

References

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Published

2021-09-05

How to Cite

Napitupulu, H., Hidayana, R. A., & Saputra, J. (2021). Determination of VaR on BBRI Stocks and BMRI Stocks Using the ARIMA-GARCH Model. Operations Research: International Conference Series, 2(3), 71–74. https://doi.org/10.47194/orics.v2i3.178