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Predicting the Change on Stock Market Index Using Emotions of Market Participants with Regularization Methods

机译:使用市场参与者与正规化方法的情感预测股票市场指数的变化

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Stock market index as the composite of a series of representative stocks plays a very crucial role in the financial market. Predicting the change of stock market index is vital for investors and stock holders to capture the trend of stocks which they are interested. Recently research from behavioral finance suggests that emotions of market participates can influence stock market index. However, variable selection becomes a major challenge. Normally, lots of key words related to emotions can be extracted from the social media, meaning that the number of predictor variables p for the data mining methods is very large. Traditional variable selection methods require that the number of observations n is sufficient lager and regularization methods could select variables for high dimensional conditions. However, it is common that n is close to p when analyzing the emotions data within a specific time period. Under this condition, both variable selection methods are applicable, but few research has been done on it. In this paper, we compare the traditional variable selection method with the regularization method under the condition that n is close to p. Then we apply typical data mining methods to predict the SSE Composite Index in China with the selected variables. The results show that the regularization methods give much better performance compared with traditional variable infliction factor (VIF) analysis.
机译:股票市场指数作为一系列代表股的综合在金融市场中发挥着非常重要的作用。预测股票市场指数的变化对于投资者和股票持有人来说至关重要,以捕捉他们感兴趣的股票趋势。最近从行为金融的研究表明,市场参与的情绪可以影响股票市场指数。但是,变量选择成为一个主要挑战。通常,可以从社交媒体中提取与情绪相关的许多关键词,这意味着数据挖掘方法的预测变量P的数量非常大。传统的变量选择方法要求观察次数n是足够的贮藏和正则化方法可以选择高维条件的变量。然而,在特定时间段内分析情绪数据时,常见的是近p。在这种情况下,两种可变选择方法都适用,但它已经完成了很少的研究。在本文中,我们将传统的变量选择方法与正则化方法进行比较,条件N接近p。然后我们应用典型的数据挖掘方法,以预测中国的SSE综合指数与所选变量。结果表明,与传统的可变抗倾焦因子(VIF)分析相比,正则化方法提供了更好的性能。

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