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首页> 外文期刊>Physica, D. Nonlinear phenomena >Gradual multifractal reconstruction of time-series: Formulation of the method and an application to the coupling between stock market indices and their Holder exponents
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Gradual multifractal reconstruction of time-series: Formulation of the method and an application to the coupling between stock market indices and their Holder exponents

机译:时间序列的逐步多重复制:制定方法和应用股票市场指数与持有人指数的耦合

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摘要

A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined from a signal that preserves the pointwise Holder exponent (multifractal) structure of a signal but randomises the locations of the original data values with respect to this (phi= 0), to the original signal itself (phi = 1). We demonstrate that this continuum may be populated with synthetic time series by undertaking selective randomisation of wavelet phases using a dual-tree complex wavelet transform. That is, the phi = 0 end of the continuum is realised using the recently proposed iterated, amplitude adjusted wavelet transform algorithm (Keylock, 2017) that fully randomises the wavelet phases. This is extended to the GMR formulation by selective phase randomisation depending on whether or not the wavelet coefficient amplitudes exceeds a threshold criterion. An econophysics application of the technique is presented. The relation between the normalised log-returns and their Holder exponents for the daily returns of eight financial indices are compared. One particularly noticeable result is the change for the two American indices (NASDAQ 100 and S&P 500) from a non-significant to a strongly significant (as determined using GMR) cross-correlation between the returns and their Holder exponents from before the 2008 crash to afterwards. This is also reflected in the skewness of the phase difference distributions, which exhibit a geographical structure, with Asian markets not exhibiting significant skewness in contrast to those from elsewhere globally. (C) 2017 Elsevier B.V. All rights reserved.
机译:制定了一种称为逐渐多分术重建(GMR)的技术。连续uum由保留信号的点座指数(多重术)结构的信号定义,但是将原始数据值的位置相对于该(PHI = 0),对原始信号本身(PHI = 1)。我们证明,通过使用双树复杂小波变换进行小波阶段的选择性随机化,可以用合成时间序列填充这种连续体。也就是说,使用最近提出的迭代的幅度调节的小波变换算法(Keylock,2017)来实现连续脉冲的PHI = 0结束,该小波变换算法(Keylock,2017)完全随机地调整小波阶段。通过选择相位随机化取决于小波系数幅度是否超过阈值标准,这将其扩展到GMR配方。提出了该技术的生态物理学应用。比较了八个财务指标日常返回的标准化记录返回与持有人指数之间的关系。一个特别明显的结果是两种美国指数(NASDAQ 100和S&P 500 500)的变化来自非重要性到2008年之前的返回和持有人指数之间的强烈差异(使用GMR)互相关然后。这也反映在相差分布的偏差上,该分布表现出地理结构,亚洲市场与全球其他地方的那些鲜明对比表现出显着的偏见。 (c)2017 Elsevier B.v.保留所有权利。

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