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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Construction of industry configuration model for network emotion mining and fundamental research based on deep learning
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Construction of industry configuration model for network emotion mining and fundamental research based on deep learning

机译:基于深度学习的网络情绪挖掘工业配置模型构建

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摘要

Stock market trading is relatively difficult due to the relatively complicated investment in financial markets. In order to solve this problem, an industry configuration model based on deep learning network sentiment mining and fundamental research is proposed innovatively in this paper. Firstly, by crawling the network information, the network public opinion data is used to conduct industry classification and sentiment analysis on the data, thereby obtaining the industry sentiment index and the industry income forecast. Then combined with the fundamental data and market data and the technical indicators generated by it, multi-factor analysis is carried out, and the income forecast is obtained. Through three sets of comparative experiments, the results show that the investment returns obtained are the best with the industry configuration model based on deep learning-based network sentiment mining and fundamental research.
机译:由于金融市场的投资相对复杂,股票市场贸易相对困难。 为了解决这个问题,在本文中提出了一种基于深度学习网络情绪挖掘和基础研究的行业配置模型。 首先,通过抓取网络信息,网络公共意见数据用于对数据进行行业分类和情感分析,从而获得行业情绪指数和行业收入预测。 然后结合基本数据和市场数据和由其产生的技术指标,进行多因素分析,并获得收入预测。 通过三套比较实验,结果表明,获得的投资回报是基于深度学习的网络情绪采矿和基础研究的行业配置模型。

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