股票价格预测的PCA-IGRU模型

Jingyang Wang Jingyang Wang, Daoqun Liu Jingyang Wang, Lukai Jin Daoqun Liu, Qiuhong Sun Lukai Jin, Zhihong Xue Qiuhong Sun
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引用次数: 0

摘要

准确的股价预测对投资者规避风险、提高投资回报率具有重要意义。股票价格预测是一个典型的非线性时间序列问题,受多种因素的影响。但是,过多地分析影响因素会导致模型中的输入冗余和计算量过大。基于递归神经网络(RNN)的股票预测模型虽然具有较好的预测效果,但存在过饱和问题。本文提出了一种基于主成分分析(PCA)和改进门控循环单元(IGRU)的股票收盘价预测模型PCA-IGRU。PCA可以在不破坏原始数据相关性的前提下减少输入信息的冗余,从而减少模型训练和预测的时间。IGRU是一种改进的门控循环单元(GRU)模型,通过引入抗过饱和转换模块(Anti-oversaturation Conversion Module, ACM)来防止过饱和,提高了模型学习的灵敏度。本文选取中国上证综合指数(SCI)的股票交易数据作为实验数据。将PCA-IGRU与7个基线模型进行比较。实验结果表明,该模型具有较好的预测精度和较短的训练时间。
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A PCA-IGRU Model for Stock Price Prediction
Accurate stock price prediction is significant for investors to avoid risks and improve the return on investment. Stock price prediction is a typical nonlinear time-series problem, which many factors affect. Still, too much analysis of influencing factors will lead to input redundancy and a large amount of computation in the model. Although the stock prediction model based on Recurrent Neural Network (RNN) has a good prediction effect, it has the problem of oversaturation. This paper proposes a prediction model of stock closing price based on Principal Component Analysis (PCA) and Improved Gated Recurrent Unit (IGRU), PCA-IGRU. PCA can reduce the redundancy of input information without destroying the correlation of original data, thus reducing the time of model training and prediction. IGRU is an improved Gated Recurrent Unit (GRU) model, which prevents oversaturation by introducing the Anti-oversaturation Conversion Module (ACM) and enhances the sensitivity of model learning. This paper selects the stock trading data of the Shanghai Composite Index (SCI) of China as experimental data. The PCA-IGRU is compared with seven baseline models. The experimental results show that the model has better prediction accuracy and shorter training time.  
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