计算机科学
卷积神经网络
股票价格
人工智能
库存(枪支)
股票市场指数
索引(排版)
股票市场
计量经济学
机器学习
数据挖掘
经济
系列(地层学)
工程类
机械工程
古生物学
马
万维网
生物
作者
Xiaodong Zhang,Suhui Liu,Xin Zheng
出处
期刊:Mathematics
[Multidisciplinary Digital Publishing Institute]
日期:2021-04-07
卷期号:9 (8): 800-800
被引量:16
摘要
The prediction of stock price movement is a popular area of research in academic and industrial fields due to the dynamic, highly sensitive, nonlinear and chaotic nature of stock prices. In this paper, we constructed a convolutional neural network model based on a deep factorization machine and attention mechanism (FA-CNN) to improve the prediction accuracy of stock price movement via enhanced feature learning. Unlike most previous studies, which focus only on the temporal features of financial time series data, our model also extracts intraday interactions among input features. Further, in data representation, we used the sub-industry index as supplementary information for the current state of the stock, since there exists stock price co-movement between individual stocks and their industry index. The experiments were carried on the individual stocks in three industries. The results showed that the additional inputs of (a) the intraday interactions among input features and (b) the sub-industry index information effectively improved the prediction accuracy. The highest prediction accuracy of the proposed FA-CNN model is 64.81%. It is 7.38% higher than that of traditional LSTM, and 3.71% higher than that of the model without sub-industry index as additional input features.
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