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Multifractal Characterization for Bivariate Data

机译:双变量数据的多重分形表征

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Multifractal analysis is a reference tool for the analysis of data based on local regularity, which has been proven useful in an increasing number of applications. However, in its current formulation, it remains a fundamentally univariate tool, while being confronted with multivariate data in an increasing number of applications. Recent contributions have explored a first multivariate theoretical grounding for multi fractal analysis and shown that it can be effective in capturing and quantifying transient higher-order dependence beyond correlation. Building on these first fundamental contributions, this work proposes and studies the use of a quadratic model for the joint multi fractal spectrum of bivariate time series. We obtain expressions for the Pearson correlation in terms of the random walk and a multifractal cascade dependence parameters under this model, provide complete expressions for the multifractal parameters and propose a transformation of these parameters into natural coordinates that allows to effectively summarize the information they convey. Finally, we propose estimators for these parameters and assess their statistical performance through numerical simulations. The results indicate that the bivariate multi fractal parameter estimates are accurate and effective in quantifying non-linear, higher-order dependencies between time series.
机译:多重分形分析是一种基于局部规则性进行数据分析的参考工具,已被证明在越来越多的应用中很有用。但是,在目前的表述中,它仍然是一个基本的单变量工具,同时在越来越多的应用程序中面临着多元数据的问题。最近的研究探索了用于多重分形分析的第一个多元理论基础,并表明它可以有效地捕获和量化超出相关性的瞬态高阶相关性。在这些最初的基本贡献的基础上,这项工作提出并研究了二次模型对双变量时间序列联合多重分形谱的使用。在此模型下,我们根据随机游动和多重分形级联依赖参数获得了Pearson相关性的表达式,提供了多重分形参数的完整表达式,并提出了将这些参数转换为自然坐标的方法,从而可以有效地总结它们传达的信息。最后,我们提出了这些参数的估计量,并通过数值模拟评估了它们的统计性能。结果表明,双变量多分形参数估计在量化时间序列之间的非线性,高阶相关性方面是准确而有效的。

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