M. Prastuti, L. Aridinanti, Ocktalia Trisnawati, Vies Sata Zullah
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引用次数: 1
基于混合时间序列和人工神经网络模型的银行股价格预测
股票是通过证券交易所交易的多种证券中的一种。银行股是印尼资本市场中相当大的一个板块。银行股价格经常被经济分析师用来反映印尼经济,这是因为银行股价格是印尼资本市场上最大的板块之一。然而,自2020年3月在印度尼西亚发现新冠肺炎疫情以来,银行股价格大幅下跌。此后,银行股价格走势持续波动,充满不确定性。本研究将使用BBCA, BMRI和bbi股价数据,通过添加干预变量,即在印度尼西亚发现Covid-19爆发的时间,预测银行股价。在本研究中,我们将比较单变量时间序列和人工神经网络的混合模型ARIMAX-NN与多变量时间序列和人工神经网络的混合模型VARX-NN。本研究结果表明,混合VARX-NN模型在BBCA、BMRI和bbi中产生的RMSE值小于armax - nn模型。©2022作者。
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