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Stock price prediction based on stock price synchronicity and deep learning

机译:基于股票价格同步和深度学习的股票价格预测

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摘要

Deep learning technology has been widely used in the financial industry, primarily for improving financial time series prediction based on stock prices. To solve the problem of low fitting and poor accuracy in traditional stock price prediction models, this paper proposes a stock price prediction model based on stock price synchronicity and deep learning methods, which applied the stock price synchronicity theory in stock price trend analysis. This paper first uses the affinity propagation algorithm to build stock clusters, and then, based on convolution neural network (CNN), and feature weight to construct the stock price synchronicity factor. At last, the long short-term memory (LSTM) network with multifactor is built for stock price trend analysis. According to the theory of stock price synchronicity, the affinity propagation algorithm can find the potential related stocks of the target stock. The spatial data analysis ability of the CNN model provides a guarantee for the application in stock price synchronicity factor analysis. The LSTM model can better analyze the information contained in the stock price time series and predict the future price. The experimental results show that, compared with the traditional multilayer neural network model, the LSTM model has better accuracy in the trend prediction of the stock price. Simultaneously, the application of stock price synchronicity effectively improves the performance of the multifactor LSTM network.
机译:深度学习技术已广泛用于金融业,主要用于改善基于股票价格的金融时序序列预测。为了解决传统股价预测模型的低拟合和准确性差的问题,本文提出了一种基于股票价格同步和深层学习方法的股票价格预测模型,其股票价格同步理论在股票价格走势分析中应用。本文首先使用亲和传播算法构建股票群集,然后基于卷积神经网络(CNN),以及构建股票价格同步系数的特征权重。最后,为股票价格趋势分析建立了带有多因素的长短期内存(LSTM)网络。根据股票价格同步性理论,亲和传播算法可以找到目标股票的潜在相关股票。 CNN模型的空间数据分析能力为股票价格同步因子分析中的应用提供了保证。 LSTM模型可以更好地分析股票价格时间序列中所含的信息并预测未来价格。实验结果表明,与传统的多层神经网络模型相比,LSTM模型在股价趋势预测中具有更好的准确性。同时,股票价格同步性的应用有效提高了多因素LSTM网络的性能。

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