基于深度学习和神经网络算法的经济金融数据分析系统

Linlin Yu
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引用次数: 0

摘要

深度学习和神经网络方法可以分析和预测金融市场产生的各种信息表现。这种经济金融分析可以更详细地预测和描述金融市场的走势、价格、风险等信息。为了解决现有经济金融数据分析研究的不足,本文讨论了时间序列模型函数方程、卷积神经网络和经济金融数据分析方法,并对本文设计的系统的测试环境、数据采集和指标进行了简要的讨论。此外,对经济金融数据分析系统的功能进行了设计和讨论。最后,将深度学习和神经网络CNN、LSTM和RNN技术应用于股票开盘价、收盘价、最高价和最低价的预测和分析进行实验。实验数据表明,CNN对股价的平均预测准确率达到87.33%。LSTM预测股价的平均准确率达到87.37%。RNN对股票价格的平均预测精度达到97.36,验证了本文算法具有良好的性能效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Economic and Financial Data Analysis System Based on Deep Learning and Neural Network Algorithm
Deep learning and neural network methods can analyze and predict various information performance generated by financial markets. This kind of economic and financial analysis can predict and describe the trend, price, risk and other information of financial markets in a more detailed way. In order to solve the shortcomings of the existing economic and financial data analysis and research, this paper discusses the time series model function equation, convolutional neural network and economic and financial data analysis methods, and briefly discusses the test environment, data collection and indicators of the system designed in this paper. In addition, the functions of economic and financial data analysis system are designed and discussed. Finally, deep learning and neural network CNN, LSTM and RNN technologies are applied to the prediction and analysis of stock opening price, closing price, highest price and lowest price for experiments. The experimental data show that the average prediction accuracy of CNN for stock prices reaches 87.33%. The average accuracy of LSTM for stock price prediction reached 87.37%. The average prediction accuracy of RNN for stock prices reaches 97.36, which verifies that the algorithm in this paper has a good performance effect.
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