预测股票价格的算法机器学习

M. O. Beg, Mubashar Nazar Awan, Syed Shahzaib Ali
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引用次数: 13

摘要

股票市场和相关实体每天都会产生大量的数据,这些数据可以从各种渠道获得,如证券交易所、经济评论和雇主财务报告。最近,机器学习技术被证明在做出更好的交易决策方面非常有帮助。机器学习算法使用复杂的逻辑来观察和学习股票的行为,并使用历史数据来预测股票的未来走势。计算滚动平均、动量和指数移动平均等技术指标,将数据转化为有意义的信息。此外,这些信息可以用来构建机器学习预测模型,学习数据中的不同模式,并为准确的财务预测做出未来预测。用于股票预测的其他因素包括社交媒体影响和股票交易的每日新闻。同时考虑到这些定性和定量特征,可以改进预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic Machine Learning for Prediction of Stock Prices
Stock markets and relevant entities generate enormous amounts of data on a daily basis and are accessible from various channels such as stock exchange, economic reviews, and employer monetary reports. In recent times, machine learning techniques have proven to be very helpful in making better trading decisions. Machine learning algorithms use complex logic to observe and learn the behavior of stocks using historical data which can be used to predict future movements of the stock. Technical indicators such as rolling mean, momentum, and exponential moving average are calculated to convert the data into meaningful information. Furthermore, this information can be used to build machine learning prediction models that learn different patterns in the data and make future predictions for accurate financial forecasting. Additional factors that are being used for stock prediction include social media influences and daily news on trading stocks. Considering these qualitative and quantitative features at the same time result in improved prediction models.
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