利用财经新闻文章进行股市预测的改进方法

Minh Dang, Duc Duong
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引用次数: 35

摘要

新闻文章在股票市场的交易策略中有意无意地向投资者传播公司的信息。由于互联网在过去十年中的巨大增长,金融文章的数量也经历了显著的增长。重要的是要尽可能快地分析信息,这样他们就可以在市场有时间调整自己以适应信息的影响之前,支持投资者做出明智的交易决策。本文提出了一种利用时间序列分析和改进的文本挖掘技术来预测股票市场每日走势的方法。实验结果表明,该系统对股票走势的预测准确率高达73%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement methods for stock market prediction using financial news articles
News articles serve the purpose of spreading company's information to the investors either consciously or unconsciously in their trading strategies on the stock market. Because of the immense growth of the internet in the last decade, the amount of financial articles have experienced a significant growth. It is important to analyze the information as fast as possible so they can support the investors in making the smart trading decisions before the market has had time to adjust itself to the effect of the information. This paper proposes an approach of using time series analysis and improved text mining techniques to predict daily stock market directions. Experiment results show that our system achieved high accuracy (up to 73%) in predicting the stock trends.
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