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Research on Decision-Making of Complex Venture Capital Based on Financial Big Data Platform

机译:基于金融大数据平台的复杂风险投资决策研究

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摘要

The prediction of stock premium has always been a hot issue. By predicting stock premiums to provide a way for companies to respond to financial risk investments, companies can avoid investment failures. In this paper, under the financial big data platform, bootstrap resampling technology and long short-term memory (LSTM) are used to predict the value of the stock premium within 20 months. First, using the theme crawler, jsoup page parsing, Solr search, and Hadoop architecture to build a platform for financial big data. Secondly, based on the block bootstrap resampling technology, the existing data information is expanded to make full use of the existing data information. Then, based on the LSTM network, the stock premium in 20 months is predicted and compared with the values predicted by support vector machine regression (SVR), and the SSE and R-square average indicators are calculated, respectively. The calculation results show that the SSE value of LSTM is lower than SVR, and the R-square value of LSTM is higher than SVR, which means that the effect of LSTM prediction is better than SVR. Finally, based on the forecast results and evaluation indicators of the stock premium, we provide countermeasures for the company's financial risk investment.
机译:预测库存溢价一直是一个热门问题。通过预测股票保费为公司提供回应财务风险投资的方式,公司可以避免投资失败。本文在金融大数据平台下,举止重采样技术和长期内存(LSTM)用于预测20个月内库存溢价的价值。首先,使用主题爬网,jsoup页面解析,solr搜索和hadoop架构,为金融大数据构建一个平台。其次,基于块引导重采样技术,扩展现有数据信息以充分利用现有数据信息。然后,基于LSTM网络,预测20个月的库存溢价,并与支持向量机回归(SVR)预测的值进行比较,并且分别计算SSE和R范围平均指示器。计算结果表明,LSTM的SSE值低于SVR,LSTM的R环值高于SVR,这意味着LSTM预测的效果优于SVR。最后,根据预测结果和股票溢价评估指标,我们为本公司的金融风险投资提供了对策。

著录项

  • 来源
    《Complexity》 |2018年第3期|共12页
  • 作者

    Luo Tao;

  • 作者单位

    Xihua Univ Sch Econ Chengdu Sichuan Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论;
  • 关键词

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