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Time-Scale Block Bootstrap Tests for Non Gaussian Finite Variance Self-Similar Processes with Stationary Increments

机译:具有平稳增量的非高斯有限方差自相似过程的时标块自举测试

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Scaling analysis is nowadays becoming a standard tool in statistical signal processing. It mostly consists of estimating scaling attributes which in turns are involved in standard tasks such as detection, identification or classification. Recently, we proposed that confidence interval or hypothesis test design for scaling analysis could be based on non parametric bootstrap approaches. We showed that such procedures are efficient to decide whether data are better modeled with Gaussian fractional Brownian motion or with multifractal processes. In the present contribution, we investigate the relevance of such bootstrap procedures to discriminate between non Gaussian finite variance self similar processes with stationary increments (such as Rosenblatt process) and multifractal processes. To do so, we introduce a new joint time-scale block based bootstrap scheme and make use of the most recent scaling analysis tools, based on wavelet leaders.
机译:缩放分析如今已成为统计信号处理中的标准工具。它主要由估计缩放属性组成,而缩放属性又涉及标准任务,例如检测,识别或分类。最近,我们提出用于标度分析的置信区间或假设检验设计可以基于非参数自举方法。我们证明了这样的过程可以有效地决定使用高斯分数布朗运动还是多重分形过程对数据进行更好的建模。在当前的贡献中,我们研究了这种引导程序的相关性,以区分具有固定增量的非高斯有限方差自相似过程(例如Rosenblatt过程)和多重分形过程。为此,我们引入了一种新的基于联合时标块的自举方案,并利用了基于小波前导的最新标度分析工具。

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