新闻极性对股市预测的影响分析:一种机器学习方法

Golshid Ranibaran, M. Moin, S. H. Alizadeh, A. Koochari
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引用次数: 1

摘要

在金融领域,股票市场及其走势在本质上是不稳定的。在动态、复杂、非线性和非参数的股票市场中,准确的预测对交易策略至关重要。这种需求吸引了研究人员去探测波动并预测下一步走势。人们认为新闻文章会影响股票市场。在本工作中,将财经新闻标题等不可测量数据转化为可测量数据。我们调查了新闻和它们对股票价格的影响之间的关系。为了显示这种关系,我们将情绪分析数据以及新闻发布前一天和新闻发布当天之间的价格差异应用于经典的机器学习模型,如SVR, BayesianRidge, LASSO,决策树和随机森林。结果表明,支持向量机在所有测试中都表现良好。该模型的预测误差为0.28,远远小于随机新闻标注的预测误差。同样根据我们的测试,使用计算机进行标记与手动标记一样好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing effect of news polarity on stock market prediction: a machine learning approach
In finance, the stock market and its trends are volatile in nature. In the stock market, which is dynamic, complex, nonlinear and non-parametric, accurate forecasting is crucial for trading strategy. This need attracted researchers to detect fluctuations and to predict the next move. It is assumed that news articles affect the stock market. In this work, non-measurable data like financial news headlines has been transferred into the measurable data. We investigated the relationship between news and their impact on stock prices. To show this relationship, we applied the sentiment analysis data and the price difference between the day before the news was published and the day of the news to the classic machine learning models such as SVR, BayesianRidge, LASSO, Decision tree and Random forest. The observations showed that SVM performs well in all tests. The prediction error in this model is 0.28, which is much less than that of the random news tagging. Also based on our tests, using a computer for tagging is as good as manual tagging.
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