会议专题

Stock Time Series Prediction Based on Deep Learning

  With the continuous development of financial markets and the gradual improvement of the financial system,people participate in financial market investment.The interest in capital is also growing,and it is accompanied by a strong demand for accurate and effective financial information services.So how to accurately predict the trend of stocks has become a focus of attention.In this paper,based on the traditional method ARIMA,the corresponding RNN(LSTM)model is proposed for the stock time series prediction problem,and its application situation is further analyzed and optimized,so that it can better explore the change law of stock data.And by setting the corresponding experimental test model method on the stock forecasting task performance.The research and evaluation of the model method demonstrates the good performance of the deep learning model and the ARIMA model in the stock time series forecasting task.The error between the stock forecasting result and the real value of each model method is at a low level.In comparison with the prediction effects of model methods such as Prophet,the RNN model proposed in this paper is closer to the real market performance,and has achieved a significantly better prediction effect than the comparison method.

RNN Time Series ARIMA Stock

Zou Cunzhu Luo Jiping Bai Shengyuan Wang Yuanze Zhong Changfa Cai Yi

Information Science and Technology College,Dalian Maritime University,Dalian,Liaoning 116026 Navigation College,Dalian Maritime University,Dalian,Liaoning 116026 College of Marine electrical engineering,Dalian Maritime University,Dalian,Liaoning 116026 Department of Nuclear Engineering & New Energy Technology,The Engineering & Technical College of Che

国际会议

2019 2nd International Conference on Mechanical, Electronic and Engineering Technology (MEET 2019) 2019年第二届机电与工程技术国际会议

西安

英文

15-19

2019-01-19(万方平台首次上网日期,不代表论文的发表时间)