数据驱动人工神经网络LSTM混合预测模型在国际股指预测中的应用

Ashkan Safari
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引用次数: 3

摘要

本文提出并研究了一种以股指预测为重点的神经网络长短期记忆混合模型。该模型由人工智能和Python环境中的神经网络进行调整。因此,它能以较高的精度进行预测,并且接近真实值。输入层、隐藏层、注意层以及输出层四层建立了所提出的混合模型。输入层执行输入数据和基于api的服务器连接。隐藏层执行计算和测量。价格价值预测和预测训练图分别由关注层和输出层完成。该系统将人工智能(AI)和机器学习(ML)对金融市场的影响概念化。最后得出结论,该模型可用于其他广泛的金融应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Driven Artificial Neural Network LSTM Hybrid Predictive Model Applied for International Stock Index Prediction
In this paper, a neural network long short term memory hybrid model focusing on stock index forecasting is modeled, presented, and investigated. This model is tuned by artificial intelligence, and neural networks in Python environment. Accordingly, it can perform the prediction with a high accuracy, and near to the real value. Four layers of input layer, hidden layer, attention layer, as well as the output layer set up the proposed hybrid model. The input data, and API-based server connection are performed in input layer. The hidden layer performs the calculations, and measurements. Price value forecasting, and prediction-train graphs done by the attention layer, and output layer, respectively. The proposed system conceptualized the effect of artificial intelligence (AI), and machine learning (ML) on financial markets. Finally, it is concluded this model can be utilized in other wide range of financial applications.
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