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Analysis of network clustering behavior of the Chinese stock market

机译:中国股票市场的网络集群行为分析

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摘要

Random Matrix Theory (RMT) and the decomposition of correlation matrix method are employed to analyze spatial structure of stocks interactions and collective behavior in the Shanghai and Shenzhen stock markets in China. The result shows that there exists prominent sector structures, with subsectors including the Real Estate (RE), Commercial Banks (CB), Pharmaceuticals (PH), Distillers&Vintners (DV) and Steel (ST) industries. Furthermore, the RE and CB subsectors are mostly anti-correlated. We further study the temporal behavior of the dataset and find that while the sector structures are relatively stable from 2007 through 2013, the correlation between the real estate and commercial bank stocks shows large variations. By employing the ensemble empirical mode decomposition (EEMD) method, we show that this anti-correlation behavior is closely related to the monetary and austerity policies of the Chinese government during the period of study.
机译:运用随机矩阵理论(RMT)和相关矩阵分解法,对中国沪深两市股票互动空间和集体行为的空间结构进行了分析。结果表明,存在突出的行业结构,其子行业包括房地产(RE),商业银行(CB),制药(PH),酒厂和酿酒师(DV)和钢铁(ST)行业。此外,可再生能源和可再生能源子行业大多是反相关的。我们进一步研究了数据集的时间行为,发现虽然从2007年到2013年行业结构相对稳定,但房地产与商业银行存量之间的相关性显示出很大的差异。通过采用综合经验模式分解(EEMD)方法,我们表明这种反相关行为与研究期间中国政府的货币和紧缩政策密切相关。

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