利用深度计算方法进行金融时间序列预测

M. Durairaj, C. Suneetha, B. Mohan
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引用次数: 1

摘要

金融时间序列本质上是混沌和非平稳的,预测其结果是一项非常复杂和具有挑战性的任务。在本研究中,混沌理论、长短期记忆(LSTM)和多项式回归(PR)相结合,创建了一个新的金融时间序列预测混合模型——混沌+LSTM+PR。这种混合的第一步将决定金融时间序列是否包含混沌。然后,利用混沌理论对时间序列中的混沌进行建模。将建模后的时间序列输入LSTM进行初始预测。由LSTM预测得到的误差序列通过PR拟合得到误差预测。将误差预测与LSTM的初始预测相结合,得到最终预测。这种混合的有效性通过三种类型的金融时间序列(Chaos+LSTM+PR)来检验,包括股票市场指数(标准普尔500指数、Nifty 50指数、上证综指)、商品价格(黄金、原油、大豆)和外汇汇率(印度卢比/美元、日元/美元、新加坡元/美元)。结果表明,该方法优于ARIMA(自回归综合移动平均)、Prophet、CART(分类与回归树)、RF(随机森林)、LSTM、Chaos+CART、Chaos+CART和Chaos+LSTM。结果也进行了统计显著性检查。
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Financial time series prediction using deep computing approaches
A financial time series is chaotic and non-stationary in nature, and predicting it outcomes is a very complex and challenging task. In this research, the theory of chaos, Long Short-Term Memory (LSTM), and Polynomial Regression (PR) are used in tandem to create a novel financial time series prediction hybrid, Chaos+LSTM+PR. The first step in this hybrid will determine whether or not a financial time series contains chaos. Following that, the chaos in the time series is modeled using Chaos Theory. The modeled time series is fed into the LSTM to obtain initial predictions. The error series obtained from LSTM predictions is fitted by PR to obtain error predictions. The error predictions and initial predictions from LSTM are combined to obtain final predictions. The effectiveness of this hybrid is examined by three types of financial time series (Chaos+LSTM+PR), including stock market indices (S&P 500, Nifty 50, Shanghai Composite), commodity prices (gold, crude oil, soya beans), and foreign exchange rates (INR/USD, JPY/USD, SGD/USD). The results show that the proposed hybrid outperforms ARIMA (autoregressive integrated moving average), Prophet, CART (Classification and Regression Tree), RF (Random Forest), LSTM, Chaos+CART, Chaos+CART, and Chaos+LSTM. The results are also checked for statistical significance.
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0.40
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发文量
25
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