4.5 Article

Study on the prediction of stock price based on the associated network model of LSTM

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s13042-019-01041-1

关键词

Deep learning; Machine learning; Long short-term memory (LSTM); Deep recurrent neural network; Associated network

资金

  1. Science and Technology Project of Guangxi [Guike AB16380260]
  2. Specialized Scientific Research in Public Welfare Industry (Meteorology) [GYHY201406027]

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Stock market has received widespread attention from investors. It has always been a hot spot for investors and investment companies to grasp the change regularity of the stock market and predict its trend. Currently, there are many methods for stock price prediction. The prediction methods can be roughly divided into two categories: statistical methods and artificial intelligence methods. Statistical methods include logistic regression model, ARCH model, etc. Artificial intelligence methods include multi-layer perceptron, convolutional neural network, naive Bayes network, back propagation network, single-layer LSTM, support vector machine, recurrent neural network, etc. But these studies predict only one single value. In order to predict multiple values in one model, it need to design a model which can handle multiple inputs and produces multiple associated output values at the same time. For this purpose, it is proposed an associated deep recurrent neural network model with multiple inputs and multiple outputs based on long short-term memory network. The associated network model can predict the opening price, the lowest price and the highest price of a stock simultaneously. The associated network model was compared with LSTM network model and deep recurrent neural network model. The experiments show that the accuracy of the associated model is superior to the other two models in predicting multiple values at the same time, and its prediction accuracy is over 95%.

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