基于深度学习的股票开盘价格预测系统的研究与实现

S. Mali
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摘要

随着经济全球化的推进,金融市场越来越受到投资者的青睐。随着金融市场的发展和需求的旺盛,股票价格走势预测引起了学术界和业界的广泛关注。众所周知,股票投资既有高回报,也有高风险。然而,影响股市波动的内外部因素难以量化,海量复杂的股票数据也难以处理。因此,传统的非人工智能方法在股票价格预测中并不总是令人满意。因此,利用大数据技术挖掘隐藏在股票中的海量有用信息,利用LSTM等神经网络技术进一步解决股价走势预测问题具有重要意义。本文报道了一种基于深度学习的股票开盘价格预测系统的开发与实现。
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Research and implementation of deep-learning-based stock opening price forecasting system
As economic globalization advances, financial market is increasingly favored by investors. With the development and strong demand of financial market, the forecast of stock price trend has aroused widespread attentions from both the academic and industry. As is well known, stock investment has both high returns and high risks. However, it is difficult to quantify the internal and external factors that affect stock market fluctuations, and it is also difficult to process massive and complex stock data. Therefore, traditional non-artificial intelligence approaches are not always satisfactory in forecasting stock price. Therefore, it has great significance to use big data technologies to excavate massive useful information hidden in stocks as well as to use neural network technology such as LSTM to further solve the problem of stock price trend forecast. In the paper, we report a development and implementation of deep learning-based stock opening price forecasting system based.
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