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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Using recurrence plot analysis to distinguish between endogenous and exogenous stock market crashes
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Using recurrence plot analysis to distinguish between endogenous and exogenous stock market crashes

机译:使用递归图分析来区分内源性和外源性股票市场崩溃

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Recurrence Plots are graphical tools based on Phase Space Reconstruction. Recurrence Quantification Analysis (RQA) is a statistical quantification of RPs. RP and RQA are good at working with non-stationarity and noisy data, in detecting changes in data behavior, in particular in detecting breaks, like a phase transition and in informing about other dynamic properties of a time series. Endogenous Stock Market Crashes have been modeled as phase changes in recent times. Motivated by this, we have used RP and RQA techniques for detecting critical regimes preceding an endogenous crash seen as a phase transition and hence give an estimation of the initial bubble time. We have used a new method for computing RQA measures with confidence intervals. We have also used the techniques on a known exogenous crash to see if the RP reveals a different story or not. The analysis is made on Nifty, Hong Kong AOI and Dow Jones Industrial Average, taken over a time span of about 3 years for the endogenous crashes. Then the RPs of all time series have been observed, compared and discussed. All the time series have been first transformed into the classical momentum divided by the maximum Xmax of the time series over the time window which is considered in the specific analysis. RPs have been plotted for each time series, and RQA variables have been computed on different epochs. Our studies reveal that, in the case of an endogenous crash, we have been able to identify the bubble, while in the case of exogenous crashes the plots do not show any such pattern, thus helping us in identifying such crashes.
机译:递归图是基于相空间重构的图形工具。复发量化分析(RQA)是RP的统计量化。 RP和RQA擅长处理非平稳性和嘈杂的数据,检测数据行为的变化,尤其是检测诸如相变之类的中断以及通知时间序列的其他动态特性。内源性股市崩溃已被建模为近期的阶段变化。因此,我们已使用RP和RQA技术检测被视为相变的内在碰撞之前的关键状态,并由此估算了初始气泡时间。我们使用了一种新的方法来计算具有置信区间的RQA量度。我们还对已知的外部崩溃使用了该技术,以查看RP是否揭示了不同的故事。分析是基于Nifty,香港AOI和道琼斯工业平均指数进行的,分析了大约3年的内源性撞车事故。然后,观察,比较和讨论了所有时间序列的RP。所有时间序列都已首先转换为经典动量,除以时间窗口中时间序列的最大Xmax,这在特定分析中已得到考虑。已为每个时间序列绘制了RP,并且已在不同时期计算RQA变量。我们的研究表明,在发生内生性崩溃的情况下,我们已经能够识别出气泡,而在外源性崩溃的情况下,曲线图未显示任何此类模式,从而有助于我们识别出此类崩溃。

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