土耳其经济新闻与股票市场的相关性

Sadi Evren Seker, C. Mert, K. Al-Naami, Nuri Ozalp, U. Ayan
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引用次数: 10

摘要

根据市场实力和结构,股票市场价值与报纸内容之间存在相关性是众所周知的事实。这种相关性在疲软和投机市场中增加,而在最强劲的市场中则永远不会降至零。本研究的重点是在土耳其高度流通的报纸上发表的经济新闻与土耳其股市收盘价值之间的相关性。在研究中,对股票市场价值和经济新闻这两个数据源都采用了几种特征提取方法。针对经济新闻为自然语言格式的特点,采用术语频率-文档频率逆的文本挖掘技术。另一方面,随机漫步、布林带、移动平均或差分等时间序列分析方法被应用于股票市场价值。在特征提取步骤之后,分类方法建立在知名分类器支持向量机、k近邻和决策树的基础上。此外,在这些分类器的基础上实现了基于多数投票的集成分类器。成功率表明,结果令人满意,表明本研究中实施的方法可以推广到其他国家类似数据集的未来研究中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correlation between the Economy News and Stock Market in Turkey
Depending on the market strength and structure, it is a known fact that there is a correlation between the stock market values and the content in newspapers. The correlation increases in weak and speculative markets, while they never get reduced to zero in the strongest markets. This research focuses on the correlation between the economic news published in a highly circulating newspaper in Turkey and the stock market closing values in Turkey. In the research several feature extraction methodologies are implemented on both of the data sources, which are the stock market values and economic news. Since the economic news is in natural language format, the text mining technique, term frequency-inverse document frequency is implemented. On the other hand, the time series analysis methods like random walk, Bollinger band, moving average or difference are applied over the stock market values. After the feature extraction step, the classification methods are built on the well-known classifiers support vector machine, k-nearest neighborhood and decision tree. Moreover, an ensemble classifier based on majority voting is implemented on top of these classifiers. The success rates show that the results are satisfactory to claim the methods implemented in this study can be spread to future research with similar data sets from other countries.
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