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Forecasting Stock Prices using Sentiment Information in Annual Reports - A Neural Network and Support Vector Regression Approach

机译:使用年报中的情绪信息预测股票价格-神经网络和支持向量回归方法

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摘要

Stock price forecasting has been mostly realized using quantitative information. However, recent studies have demonstrated that sentiment information hidden in corporate annual reports can be successfully used to predict short-run stock price returns. Soft computing methods, like neural networks and support vector regression, have shown promising results in the forecasting of stock price due to their ability to model complex non-linear systems. In this paper, we apply several neural networks and ε-support vector regression models to predict the yearly change in the stock price of U.S. firms. We demonstrate that neural networks and ε-support vector regression perform better than linear regression models especially when using the sentiment information. The change in the sentiment of annual reports seems to be an important determinant of long-run stock price change. Concretely, the negative and uncertainty categories of terms were the key factors of the stock price return. Profitability and technical analysis ratios have significant effect on the long-run return, too.
机译:股价预测主要是使用定量信息来实现的。但是,最近的研究表明,隐藏在公司年度报告中的情绪信息可以成功地用于预测短期股票价格的回报。像神经网络和支持向量回归这样的软计算方法,由于具有建模复杂非线性系统的能力,因此在股票价格的预测中显示出令人鼓舞的结果。在本文中,我们应用了多个神经网络和ε-支持向量回归模型来预测美国公司股价的年度变化。我们证明神经网络和ε-支持向量回归比线性回归模型表现更好,特别是在使用情感信息时。年度报告情绪的变化似乎是长期股价变化的重要决定因素。具体而言,术语的负数和不确定性类别是股价回报的关键因素。获利能力和技术分析比率也对长期收益产生重大影响。

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