Abstract

This paper analyzed the development of data mining and the development of the fifth generation (5G) for the Internet of Things (IoT) and uses a deep learning method for stock forecasting. In order to solve the problems such as low accuracy and training complexity caused by complicated data in stock model forecasting, we proposed a forecasting method based on the feature selection (FS) and Long Short-Term Memory (LSTM) algorithm to predict the closing price of stock. Considering its future potential application, this paper takes 4 stock data from the Shenzhen Component Index as an example and constructs the feature set for prediction based on 17 technical indexes which are commonly used in stock market. The optimal feature set is decided via FS to reduce the dimension of data and the training complexity. The LSTM algorithm is used to forecast closing price of stock. The empirical results show that compared with the LSTM model, the FS-LSTM combination model improves the accuracy of prediction and reduces the error between the real value and the forecast value in stock price prediction.

Highlights

  • The wide application of information technology gives rise to the increase in data flow and the number of intelligent terminals

  • The artificial neural network (ANN) has achieved remarkable results in the field of artificial intelligence algorithm whose predictive analysis capability has greatly promoted the application of technologies like big data

  • This paper presents a FS-Long Short-Term Memory (LSTM) combination model based on feature selection and LSTM prediction for stock trend prediction

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Summary

Introduction

The wide application of information technology gives rise to the increase in data flow and the number of intelligent terminals. Owing to the fast transmission network, the emergence of the 5G network will promote the innovation and development of the Internet of Things (IoT) technology. The utility of IoT technology requires massive information connection and high-speed network communication. The emergence of the 5G network can promote the innovation and development of IoT technology. The use of 5G communication network infrastructure can reduce the cost of IoT construction and investment, improving the efficiency of IoT construction. The stock price is forecasted and the forecasting results are analyzed (3) The application of 5G and IoT in stock forecasting is analyzed in aspects of data storage, efficiency, and processing speed.

Related Work
Stock Prediction Algorithms
Application of 5G and IoT in Stock Forecasting
Empirical Analysis
Conclusion
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