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Using social media mining technology to improve stock price forecast accuracy

机译:利用社交媒体矿业技术提高股票价格预测准确性

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摘要

Many stock investors make investment decisions based on stock-price-related chip indicators. However, in addition to quantified data, financial news often has a nonnegligible impact on stock price. Nowadays, as new reviews are posted daily on social media, there may be value in using web opinions to improve the performance of stock price prediction. To this end, we use logistic regression to screen the chip indicators and establish a basic stock price prediction model. Then, we employ text mining technology to quantify the unstructured data of social media opinions on stock-related news into sentiment scores, which are found to correlate significantly with the change extent of the stock price. Based on the findings that the higher the sentiment scores, the lower the prediction accuracy of the logistic regression model, we propose an improved prediction approach that integrates sentiment scores into the logistic regression model. Our results show that the proposed model can improve the prediction accuracy for stock prices, and can thus provide a new reference for investment strategies for stock investors.
机译:许多股票投资者根据股票价格相关芯片指标进行投资决策。但是,除了量化的数据外,财经新闻往往对股票价格有不可止境的影响。如今,随着新的评论,每天在社交媒体上发布,可能会在利用网络意见来提高股票价格预测的绩效。为此,我们使用Logistic回归来筛选芯片指示器并建立一个基本股票价格预测模型。然后,我们雇用了文本挖掘技术,量化了对股票相关新闻的社交媒体意见的非结构化数据,以情绪分数,这被发现与股票价格的变化程度显着相关。基于表现得分越高的发现,逻辑回归模型的预测准确性越低,我们提出了一种改进的预测方法,将情谱分数集成到逻辑回归模型中。我们的研究结果表明,该拟议的模型可以提高股票价格的预测准确性,因此可以为股票投资者提供新的投资策略参考。

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