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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Design of data mining algorithm based on rough entropy for us stock market abnormality
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Design of data mining algorithm based on rough entropy for us stock market abnormality

机译:基于粗糙熵的数据挖掘算法设计对美国股市异常的影响

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摘要

The economic interaction between the countries of the world is gradually strengthening. Among them, the US stock market is a "barometer" of the global economy, which has a huge impact on the global economy. Therefore, it is of great significance to study the data in the US stock market, especially the data mining algorithm of abnormal data. At present, although data mining technology has achieved many research results in the financial field, it has not formed a good research system for time series data in stock market anomalies. According to the actual performance and data characteristics of the stock market anomaly, this paper uses data mining techniques to find the abnormal data in the stock market data, and uses the isolated point detection method based on density and distance to analyze the obtained abnormal data to obtain its implicit useful information. However, due to the defects of traditional data mining algorithms in dealing with stock market anomalies containing uncertain factors, that is, the errors caused by other human factors, this paper introduces the roughening entropy of the uncertainty data and applies its theory to the field of data mining, a data mining algorithm based on rough entropy in the US stock market anomaly is designed. Finally, the empirical analysis of the algorithm is carried out. The experimental results show that the data mining algorithm based on rough entropy proposed in this paper can effectively detect the abnormal fluctuation of time series in the stock market.
机译:世界各国之间的经济互动逐步加强。其中,美国股市是全球经济的“晴雨表”,对全球经济产生了巨大影响。因此,研究美国股市中的数据,特别是数据挖掘算法的异常数据挖掘算法具有重要意义。目前,虽然数据挖掘技术已经取得了许多研究成果,但它没有形成良好的股票市场异常中的时间序列数据研究系统。根据股票市场异常的实际性能和数据特征,本文采用数据挖掘技术在股票市场数据中找到异常数据,并使用基于密度和距离的孤立点检测方法分析所获得的异常数据获取隐含的有用信息。但是,由于传统数据挖掘算法的缺陷处理含有不确定因素的股票市场异常,即其他人为因素引起的错误,介绍了不确定性数据的粗糙化熵,并将其理论应用于现场设计了一种基于美国股票市场粗熵的数据挖掘算法。最后,进行了对算法的实证分析。实验结果表明,本文提出的基于粗糙熵的数据挖掘算法可以有效地检测股票市场时间序列的异常波动。

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