Qi Jingchao, Yang Huijie
Business School, University of Shanghai for Science and Technology, Shanghai 200093, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2011 Dec;84(6 Pt 2):066114. doi: 10.1103/PhysRevE.84.066114. Epub 2011 Dec 19.
A concept called balanced estimator of diffusion entropy is proposed to detect quantitatively scalings in short time series. The effectiveness is verified by detecting successfully scaling properties for a large number of artificial fractional Brownian motions. Calculations show that this method can give reliable scalings for short time series with length ~10(2). It is also used to detect scalings in the Shanghai Stock Index, five stock catalogs, and a total of 134 stocks collected from the Shanghai Stock Exchange Market. The scaling exponent for each catalog is significantly larger compared with that for the stocks included in the catalog. Selecting a window with size 650, the evolution of scaling for the Shanghai Stock Index is obtained by the window's sliding along the series. Global patterns in the evolutionary process are captured from the smoothed evolutionary curve. By comparing the patterns with the important event list in the history of the considered stock market, the evolution of scaling is matched with the stock index series. We can find that the important events fit very well with global transitions of the scaling behaviors.
提出了一种称为扩散熵平衡估计器的概念,用于定量检测短时间序列中的标度。通过成功检测大量人工分数布朗运动的标度特性,验证了该方法的有效性。计算表明,该方法可以为长度约为10(2)的短时间序列给出可靠的标度。它还被用于检测上证指数、五个股票类别以及从上海证券交易所市场收集的总共134只股票中的标度。每个类别的标度指数与该类别中包含的股票相比明显更大。选择大小为650的窗口,通过窗口沿序列滑动获得上证指数标度的演变。从平滑的演变曲线中捕捉到演变过程中的全局模式。通过将这些模式与所考虑股票市场历史中的重要事件列表进行比较,标度的演变与股票指数序列相匹配。我们可以发现,重要事件与标度行为的全局转变非常吻合。