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Fractal analysis of the short time series in a visibility graph method

机译:可见度图法中短时间序列的分形分析

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The aim of this study is to evaluate the performance of the visibility graph (VG) method on short fractal time series. In this paper, the time series of Fractional Brownian motions (fBm), characterized by different Hurst exponent H, are simulated and then mapped into a scale-free visibility graph, of which the degree distributions show the power-law form. The maximum likelihood estimation (MLE) is applied to estimate power-law indexes of degree distribution, and in this progress, the Kolmogorov Smirnov (KS) statistic is used to test the performance of estimation of power-law index, aiming to avoid the influence of droop head and heavy tail in degree distribution. As a result, we find that the MLE gives an optimal estimation of power-law index when KS statistic reaches its first local minimum. Based on the results from KS statistic, the relationship between the power-law index and the Hurst exponent is reexamined and then amended to meet short time series. Thus, a method combining VG, MLE and KS statistics is proposed to estimate Hurst exponents from short time series. Lastly, this paper also offers an exemplification to verify the effectiveness of the combined method. In addition, the corresponding results show that the VG can provide a reliable estimation of Hurst exponents. (C) 2016 Elsevier B.V. All rights reserved.
机译:本研究的目的是评估可见度图(VG)方法在短分形时间序列上的性能。本文模拟了以不同的赫斯特指数H为特征的分数布朗运动(fBm)的时间序列,然后将其映射到无标度可见性图中,其度分布显示幂律形式。应用最大似然估计(MLE)来估计度分布的幂律指数,在此过程中,使用Kolmogorov Smirnov(KS)统计量来检验幂律指数的估计性能,目的是避免影响头和尾巴沉重度分布的关系。结果,我们发现当KS统计量达到其第一个局部最小值时,MLE给出了幂律指数的最佳估计。根据KS统计的结果,重新检验幂律指数与Hurst指数之间的关系,然后对其进行修改以满足较短的时间序列。因此,提出了一种结合VG,MLE和KS统计量的方法来从短时间序列估计Hurst指数。最后,本文还提供了一个例证来验证组合方法的有效性。另外,相应的结果表明,VG可以提供对Hurst指数的可靠估计。 (C)2016 Elsevier B.V.保留所有权利。

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