Perbandingan Metoda Value At Risk antara Metoda Risk Metric, Historical Back Sumulation, dan Monte Carlo Simulation dalam Rangka Memprediksi Risiko Investasi pada Properti Periode 2008-2014
DOI:
https://doi.org/10.35384/jemp.v2i1.64Keywords:
Risk management, Value at Risk, Historical Simulation, Variance-Covariance, Operational RiskAbstract
This study is aim to investigate the useful of method VaR in hence prediction of investment risk on common stock property were listed at Indonesian Stock Exchange (BEI). The method VaR can be divided by three criteria, such as accurate, efficient, and conservative. Using time series data price of stock properties for seven years, the data has been analised using the tools of Microsoft Excel and E-views 7. The sample of this study was property sector with purposive sampling criteria such as the stock are actively trade, the company have complete data of prices for the period of the study, and the company total asset are more than 5 (five) billion rupiah. The research show that Risk Metric Method is conservatif (95% confidence level) and Historical Simulation Method is the conservative (99% confidence level) in predicting Investment Risk property sector. Furthermore, Monte Carlo Method is the most efficient (95% and 99% confidence level) and the most accurate (95% and 99% confidence level) in predicting Investment Risk property sector. This result was supporting previously research by Ni’mah (2014) that Monte Carlo Simulation is the most effisien and accurate for investor predicting of investment risk with 95% confidence level.Downloads
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2018-02-07
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