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Using Internet Search Trends and Historical Trading Data for Predicting Stock Markets by the Least Squares Support Vector Regression Model

机译:最小二乘支持向量回归模型用于使用Internet搜索趋势和历史交易数据预测股市

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摘要

Historical trading data, which are inevitably associated with the framework of causality both financially and theoretically, were widely used to predict stock market values. With the popularity of social networking and Internet search tools, information collection ways have been diversified. Instead of only theoretical causality in forecasting, the importance of data relations has raised. Thus, the aim of this study was to investigate performances of forecasting stock markets by data from Google Trends, historical trading data (HTD), and hybrid data. The keywords employed for Google Trends are collected from three different ways including users' definitions (GTU), trending searches of Google Trends (GTTS), and tweets (GTT) correspondingly. The hybrid data include Internet search trends from Google Trends and historical trading data. In addition, the correlation-based feature selection (CFS) technique is used to select independent variables, and one-step ahead policy is adopted by the least squares support vector regression (LSSVR) for predicting stock markets. Numerical experiments indicate that using hybrid data can provide more accurate forecasting results than using single historical trading data or data from Google Trends. Thus, using hybrid data of Internet search trends and historical trading data by LSSVR models is a promising alternative for forecasting stock markets.
机译:历史上的交易数据在财务和理论上都不可避免地与因果关系相关联,被广泛用于预测股票市场价值。随着社交网络和互联网搜索工具的普及,信息收集方式已经多样化。数据关系的重要性已经提高,而不仅仅是预测中的理论因果关系。因此,本研究的目的是通过Google趋势,历史交易数据(HTD)和混合数据来研究预测股市的表现。 Google趋势使用的关键字是通过三种不同方式收集的,包括用户定义(GTU),对Google趋势的趋势搜索(GTTS)和推文(GTT)。混合数据包括来自Google趋势的互联网搜索趋势和历史交易数据。此外,基于相关的特征选择(CFS)技术用于选择自变量,最小二乘支持向量回归(LSSVR)采用一步一步的策略来预测股市。数值实验表明,与使用单个历史交易数据或Google趋势数据相比,使用混合数据可以提供更准确的预测结果。因此,通过LSSVR模型使用Internet搜索趋势和历史交易数据的混合数据是预测股票市场的有希望的替代方法。

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