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Social Web-Based Anxiety Index's Predictive Information on SP 500 Revisited

机译:重新审视基于社交网络的焦虑指数对S&P 500的预测信息

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摘要

There has been an increasing interest recently in examining the possible relationships between emotions expressed online and stock markets. Most of the previous studies claiming that emotions have predictive influence on the stock market do so by developing various machine learning predictive models, but do not validate their claims rigorously by analysing the statistical significance of their findings. In turn, the few works that attempt to statistically validate such claims suffer from important limitations of their statistical approaches. In particular, stock market data exhibit erratic volatility, and this time-varying volatility makes any possible relationship between these variables non-linear, which tends to statistically invalidate linear based approaches. Our work tackles this kind of limitations, and extends linear frameworks by proposing a new, non-linear statistical approach that accounts for non-linearity and heteroscedasticity.
机译:最近,人们越来越关注研究在线表达的情绪与股票市场之间可能的关系。先前的大多数研究声称情绪对股票市场具有预测性影响,这是通过开发各种机器学习预测模型来实现的,但并未通过分析其发现的统计意义来严格验证其主张。反过来,极少数试图从统计角度验证此类主张的著作受到其统计方法的重要限制。特别是,股票市场数据表现出不稳定的波动性,而这种随时间变化的波动性使得这些变量之间的任何可能关系都是非线性的,这倾向于使基于线性的方法在统计上无效。我们的工作解决了这种局限性,并通过提出一种新的非线性统计方法来扩展线性框架,该方法考虑了非线性和异方差。

著录项

  • 来源
  • 会议地点 Egham(GB)
  • 作者单位

    Data Science and Soft Computing Lab, Department of Computing, Goldsmiths College, University of London, London, UK;

    Data Science and Soft Computing Lab, Department of Computing, Goldsmiths College, University of London, London, UK;

    Department of Computer Science, Frankfurt University of Applied Sciences, Frankfurt, Germany;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 入库时间 2022-08-26 14:06:23

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