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Comparative Study of Numerical Methods in Multiple Linear Regression For Stock Prediction Jakarta Islamic Index (JII)

机译:预测雅加达伊斯兰指数(JII)的多元线性回归数值方法的比较研究

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Stock index predictions in various countries around the world are one of the few challenging issues to be solved. The existence of stock index into a picture of a state of the market in a country, including in Indonesia. Because of the important stock index in a country, it is necessary to predict the future value of the stock. In this research, Jakarta Islamic Index (JII) is used to predict the stock index. To predict the stock indeks value, we proposed a Multiple Linear Regression as a method with coefficient determination using several numerical methods, namely Gauss-Jordan method, Gaussian elimination, and Cramer's rule. Several numerical methods used to solve the system of linear equations on multiple linear regression aim to find out the best numerical method to use. Mean Absolute Percentage Error (MAPE) is used as a comparison of the linear equations system solution method that has been used to test the accuracy of the three methods, and the smaller MAPE value then the prediction models perform better. From the test results it can be concluded that the Gauss Elimination and Cramer's rule method produces the minimum MAPE error value of 0.43% and 0.44%, while for Gauss-Jordan produces MAPE 0.83%.
机译:世界各国对股票指数的预测是要解决的极少数具有挑战性的问题之一。股票指数的存在可以反映一个国家(包括印度尼西亚)的市场状况。由于一个国家中重要的股票指数,因此有必要预测股票的未来价值。在这项研究中,雅加达伊斯兰指数(JII)用于预测股票指数。为了预测库存负债值,我们提出了一种多元线性回归方法,该方法使用多种数值方法来确定系数,这些方法分别是高斯-乔丹法,高斯消去法和克莱默法则。在多元线性回归中用于求解线性方程组的几种数值方法旨在找出最佳的数值方法。平均绝对百分比误差(MAPE)用作线性方程组系统求解方法的比较,该方法已用于测试这三种方法的准确性,并且MAPE值较小,则预测模型的性能更好。从测试结果可以得出结论,高斯消除法和克莱默法则法产生的最小MAPE误差值分别为0.43%和0.44%,而对于高斯-乔丹,则产生的MAPE误差值为0.83%。

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