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金融数据挖掘中的非线性相关跟踪技术
引用本文:易东云,张维明,杜小勇.金融数据挖掘中的非线性相关跟踪技术[J].软件学报,2000,11(12):1581-1586.
作者姓名:易东云  张维明  杜小勇
作者单位:国防科学技术大学,数学与系统科学系,湖南,长沙,410073
基金项目:This project is suppported by the National Natural Science Foundation of China under Grant No.60003013 and 69872039(国家自然科学基金).
摘    要:金融数据挖掘是信息社会中一个极具挑战性的研究方向.金融数据的随机特性使得隐藏在数据中的内在规则难以被发现.指出了经典相关分析的缺陷,进一步讨论了高阶相关系数的性质,证明了高阶相关不仅能描述隐藏的非线性相关信息,而且正好刻画了线性相关与独立之间的空白.因此,完全可以利用高阶相关性的计算简单性对金融数据中的时变非线性相关特性进行实时跟踪,克服了Brock W.等人于1987年和1992年提出的Granger-Causality独立性检验方法中需要正态假设和非实时性的缺点.最后,将上述结果应用于股票价格与成交量之间的相关分析.数值结果显示高阶相关能跟踪隐藏在数据中的时变非线性相关特性.

关 键 词:非线性分析  数据挖掘  金融数据
收稿时间:1998/11/25 0:00:00
修稿时间:1999/10/18 0:00:00

Nonlinear Correlation Tracking Technique in Data Mining of Financial Markets
YI Dong-yun,ZHANG Wei-ming and DU Xiao-yong.Nonlinear Correlation Tracking Technique in Data Mining of Financial Markets[J].Journal of Software,2000,11(12):1581-1586.
Authors:YI Dong-yun  ZHANG Wei-ming and DU Xiao-yong
Abstract:Financial data mining is one of the most challenging research directions in information society. Financial data with random characteristics make it difficult to find out the rule hidden in data. In this paper, it is pointed out that correlation coefficient can not capture nonlinear information, which is the serious defect of classic correlation analysis. Furthermore, the properties of the high-order correlation coefficient are discussed, and it is proved that high-order correlation can not only describe the hidden nonlinear correlation, but also fill up the space between classic correlation and independence. The computational simplicity makes the high-order correlation coefficient be an effective technique to track nonlinear relation between variables. Finally, the above results are applied to the correlative analysis between stock price and stock trading volume, and the computing results show that the high-order correlation coefficient can track the time-varying nonlinear characteristics.
Keywords:nonlinear analysis  data mining  financial data
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