基于ARMA模型的股票价格预测

Huanze Tang
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引用次数: 0

摘要

金融时间序列包含了一些反映系统运行规律的信息。研究人员可以使用经典的时间序列模型来研究之前的股票价格,并预测价格波动的短期趋势。在本文中,我们选择苹果公司2018年至2019年底调整后的收盘价。然后对原始数据进行第一次差分,使序列平稳,应用ARMA模型预测苹果公司未来5天的调整后收盘价。将我们预测的时间序列与实际值进行比较。结果表明,数据的错误率较低,表明ARMA模型适用于价格的短期预测和远期预测。同时,进一步证明了时间序列模型在金融研究中的积极催化作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Prices Prediction Based on ARMA Model
The financial time series contain some information that indicates the operation law of the system. Researchers can use classic models of time series to study previous stock prices and predict a short-term trend of the volatility of the prices. In this article, we choose the adjusted closing prices of Apple Inc from 2018 to the end of 2019. Then we perform the first difference on the original data to make the sequence stationary to apply the ARMA model to predict the adjusted closing prices of Apple Inc in the next five days. The time series, which we predict, is compared to the actual value. And it turns out that the data's error rates are low, indicating that the ARMA model is suitable for the short-term prediction of the prices and further. Meanwhile, it further proves that the time series model serves as a positive catalyst in the study of finance.
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