Stock Trend Prediction of Communication Industry Based on LSTM Neural Network Algorithm and Research of Industry Development Strategy: – A Case Study of Zhongxing Telecommunication Equipment Corporation

Boyi Wan, Yun Shen
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Abstract

Based on the background of "ZTE event" in China-US trade friction, in order to effectively analyze the stock trend of communication industry in the securities market, this paper uses the long short-term memory (LSTM) neural network to establish a deep learning model, taking stock of Zhongxing Telecommunication Equipment Corporation as the specific research object, and predicts the stock price of ZTE within two years after the outbreak of "ZTE event" The prediction results are compared with the actual stock price and the experimental results show that the proposed method can effectively predict the development trend of the stock. Based on the research results, this paper analyzes the future development of China's communication industry under the background of China-US trade friction, and puts forward the corresponding industry development strategy, which provides reference for the development strategy of Chinese communication enterprises.
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基于LSTM神经网络算法的通信行业股票走势预测与行业发展战略研究——以中兴通信设备有限公司为例
基于中美贸易摩擦中的“中兴事件”背景,为了有效分析证券市场中通信行业的股票走势,本文采用长短期记忆(LSTM)神经网络建立深度学习模型,以中兴通信设备股份有限公司股票为具体研究对象,并对“中兴事件”爆发后两年内中兴通讯的股价进行了预测,将预测结果与实际股价进行了对比,实验结果表明,所提出的方法能够有效预测该股票的发展趋势。基于研究结果,本文分析了中美贸易摩擦背景下中国通信行业的未来发展,并提出了相应的行业发展战略,为中国通信企业的发展战略提供参考。
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