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On XLE Index Constituents' Social Media Based Sentiment Informing the Index Trend and Volatility Prediction

机译:基于XLE指数成分股的基于社交媒体的情绪来告知指数趋势和波动率预测

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Collective intelligence represented as sentiment extracted from social media mining found applications in various areas. Numerous studies involving machine learning modelling have demonstrated that such sentiment information may or may not have predictive power on the stock market trend. This research investigates the predictive information of sentiment regarding the Energy Select Sector related XLE index and of its constituents, on the index and its volatility, based on a novel robust machine learning approach. While we demonstrate that sentiment does not have any impact on any of the trend prediction scenarios investigated here related to XLE and its constituents, the sentiment's impact on volatility predictions is significant. The proposed volatility prediction modelling approach, based on Jordan and Elman recurrent neural networks, demonstrates that the addition of sentiment or sentiment moment reduces the prediction root mean square error (RMSE) to about one third. The experiments we conducted also demonstrate that the addition of sentiment reduces the RMSE for 24 out of the 36 stocks/constituents, representing 87.9% of the index weight. This is the first study in the literature relating to the prediction of the market trend or the volatility based on an index and its constituents' sentiment.
机译:表示为从社交媒体挖掘中提取的情感的集体智慧在各个领域得到了应用。涉及机器学习建模的大量研究表明,这种情绪信息可能对股市趋势具有预测力,也可能没有预测力。这项研究基于一种新颖的强大的机器学习方法,研究了与能源选择行业相关的XLE指数及其成分的情绪的预测信息,以及该指数及其波动率。尽管我们证明情绪对此处研究的与XLE及其成分有关的任何趋势预测方案都没有任何影响,但情绪对波动率预测的影响却是重大的。基于Jordan和Elman递归神经网络的拟议的波动率预测建模方法表明,情绪或情绪矩的增加将预测均方根误差(RMSE)降低至约三分之一。我们进行的实验还表明,增加情绪可以降低36种股票/成分股中的24种的RMSE,占指数权重的87.9%。这是文献中有关基于指数及其成分情绪预测市场趋势或波动性的第一项研究。

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