神经网络自回归预测每日黄金价格

Mohamad As’ad, S. Sujito, Sigit Setyowibowo
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引用次数: 1

摘要

黄金是一种贵金属,既是宝石,也是投资工具。很多人投资黄金的原因是因为它实用、不易损坏、易变现、不纳税等目的。基于此,很多人选择黄金作为投资。投资黄金的人面临的问题与黄金价格预测的不确定性有关,因此需要预测方法的准确性。本文的目的是利用神经网络自回归(NNAR)方法准确预测每日黄金价格。为了找出NNAR方法的准确性值,训练数据使用了从雅虎财经获得的每日黄金价格形式的辅助数据。NNAR方法的测试结果使用NNAR(25,13)模型得到了更好更准确的水平,MAPE值为0.370707,MASE为0.5851083,RMSE为6.939331。本文结果的结论是,利用NNAR(25,13)模型,黄金的日价格会受到一天到24个周期前的黄金日价格的影响。
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Neural Network Autoregressive For Predicting Daily Gold Price
Gold is a precious metal that functions as a gem and also an investment. Gold investment is the reason for many people because it is practical, not easily damaged, easy cashed, not taxable, and other purposes. Based on this, many people choose gold as an investment. The problem for people who will invest in gold is related to uncertain gold price predictions so that the accuracy of forecasting methods are needed. The purpose of this paper is to forecast accurately daily gold prices using the Neural Network Autoregressive (NNAR) method. Training Data to find out the value of accuracy in the NNAR method uses secondary data obtained from Yahoo Finance in the form of daily gold prices. Test results on the NNAR method produce a better and more accurate level using the NNAR (25,13) model with a MAPE value of 0.370707, a MASE of 0.5851083, and an RMSE of 6.939331. The conclusion of the results of this paper is the daily price of gold is influenced by the daily price of gold a day ago to 24 periods ago with the NNAR (25,13) model.
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审稿时长
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