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首页> 外文期刊>Folia Oeconomica Stetinensia >A Comparison Of K-Means And Fuzzy C-Means Clustering Methods For A Sample Of Gulf Cooperation Council Stock Markets
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A Comparison Of K-Means And Fuzzy C-Means Clustering Methods For A Sample Of Gulf Cooperation Council Stock Markets

机译:海湾合作委员会股票市场样本的 K -均值和模糊 C -均值聚类方法的比较

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The main goal of this article is to compare data-mining clustering methods (k-means and fuzzy c-means) based on a sample of banking and energy companies on the Gulf Cooperation Council (GCC) stock markets. We examined these companies for a pattern that reflected the effect of news on the bank sector’s stocks throughout October, November, and December 2012. Correlation coefficients and t-statistics for the good news indicator (GNI) and the bad news indicator (BNI) and financial factors, such as PER, PBV, DY and rate of return, were used as diagnostic variables for the clustering methods.
机译:本文的主要目的是基于海湾合作委员会(GCC)股票市场上的银行和能源公司的样本,比较数据挖掘聚类方法(k均值和模糊c均值)。我们检查了这些公司的模式,以反映新闻在整个2012年10月,11月和2012年12月的影响。好消息指标(GNI)和坏消息指标(BNI)的相关系数和t统计量以及财务因素,例如PER,PBV,DY和收益率,被用作聚类方法的诊断变量。

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