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Excessive co-movement effect and evolution network analysis of Chinese stock market

机译:中国股市过度联动效应与演化网络分析

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In order to better understand mutual influences among stock price fluctuations, we treat stocks on the market as nodes, collecting closing price data of The Shanghai and Shenzhen 300 Index from 2014 to 2016. And we use the partial correlation coefficient to measure the linkage effect between stocks. Specifically, through the selection of a certain threshold, we get a financial complex network with stock linkage effect. Furthermore, we use Newman Fast analysis algorithm to divide Shanghai and Shenzhen 300 Index network into 15 communities. It turns out that the correlation within the community is significantly closer than the correlation between the community and the outside community, which is called close price-fluctuating plate. Moreover, through the time division that is used to analyze the structure of stock network community, we may conclude that banks, securities and real estate stocks' prices are basically a synchronous change during this period. And there are also some stocks which have excessive co-movement effect changes asynchronously. The results of our work can not only provide inner information and linkage on the stock market capital flows, but also can explore the evolution of the stock market rules.
机译:为了更好地理解股价波动之间的相互影响,我们以市场中的股票为节点,收集了2014-2016年沪深300指数的收盘价数据。股票。具体来说,通过选择一定的阈值,我们得到了具有股票联动效应的金融复杂网络。此外,我们使用纽曼快速分析算法将上海和深圳300指数网络划分为15个社区。事实证明,社区内部的相关性远大于社区与外部社区之间的相关性,这被称为紧密价格波动板块。此外,通过用于分析股票网络社区结构的时间划分,我们可以得出结论,在此期间,银行,证券和房地产股票的价格基本上是同步变化的。另外,有些股票的联动效应会异步变化。我们的工作结果不仅可以提供有关股票市场资本流动的内在信息和联系,而且可以探索股票市场规则的演变。

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