Egarch Model Prediction for Sale Stock Price

Ismail Husein, Arya Impun Diapari Lubis
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引用次数: 1

Abstract

Stock is an investment in the capital market that is very promising for investors. Investors can also get high returns from the shares invested. However, this stock price is not always stable, it can go up and down drastically. The purpose of this study is to predict stock prices because they often experience instability. The method used in this research is using the Exponential generalized autoregressive conditional heteroscedasticity (EGARCH) model with the Quasi Maximum Likelihood (QML) method. The result of this research is the implementation of this model. The EGARCH model used is the stock price index model that is formed, namely the autoregressive integrated moving average (ARIMA) (0, 1, 2) EGARCH (1.4). The conclusion from the results of the research that predictions using the ARIMA model (0, 1, 2) EGARCH (1, 4) is the best model in accommodating the asymmetric nature of the volatility of the stock price index. The results of this egarch model show more optimal prediction results seen from an error of 3% compared to other modes such as the arch model and the GARCH model.
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销售股票价格的Egarch模型预测
股票是资本市场上的一种投资,对投资者来说很有前途。投资者也可以从投资的股票中获得高额回报。然而,这个股票价格并不总是稳定的,它可以大幅上升和下降。本研究的目的是预测股票价格,因为他们经常经历不稳定。本研究采用的方法是拟极大似然(QML)方法的指数广义自回归条件异方差(EGARCH)模型。本研究的结果就是该模型的实现。所使用的EGARCH模型是形成的股票价格指数模型,即自回归积分移动平均(ARIMA) (0,1,2) EGARCH(1.4)。研究结果表明,ARIMA模型(0,1,2)EGARCH(1, 4)是最能适应股票价格指数波动不对称性质的预测模型。结果表明,与arch模型和GARCH模型相比,该模型的预测结果更优,误差为3%。
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