Predicting Market Behavior with Artificial Neural Networks: Gold Price as an Example

Mohamad Kharseh, Basem Yousef, K. A. Amara, A. Sakhrieh
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Abstract

Due to the highly nonlinear and random nature of the financial time series, forecasting the price of a product of interest is a very challenging task. Artificial neural networks excel at connecting diverse data sets, which has significant potential for commercial operations. The current study investigates the possibility of applying machine learning techniques to forecast the price of a target product by using information from other stock indexes. The gold price was the selected product while the stock indexes were S&P500, NASDAQ, DAX 40, Dow-jones, Nikkei, and oil prices. The data used in the study covered the previous 10 years. The simulations showed that neural networks can be used for making accurate predictions for the price of gold for the next 50 days.
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用人工神经网络预测市场行为:以黄金价格为例
由于金融时间序列的高度非线性和随机性,预测利息产品的价格是一项非常具有挑战性的任务。人工神经网络擅长连接不同的数据集,具有巨大的商业运营潜力。目前的研究调查了应用机器学习技术通过使用其他股票指数的信息来预测目标产品价格的可能性。黄金价格是选定的产品,股票指数是标准普尔500指数、纳斯达克指数、DAX 40指数、道琼斯指数、日经指数和油价。研究中使用的数据涵盖了过去10年的数据。模拟表明,神经网络可以用来对未来50天的黄金价格做出准确的预测。
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