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Segmentation of time series with long-range fractal correlations

机译:时间序列分割远射分的相关性

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摘要

Segmentation is a standard method of data analysis to identify change-points dividing a nonstationary time series into homogeneous segments. However, for long-range fractal correlated series, most of the segmentation techniques detect spurious change-points which are simply due to the heterogeneities induced by the correlations and not to real nonstationarities. To avoid this oversegmentation, we present a segmentation algorithm which takes as a reference for homogeneity, instead of a random i.i.d. series, a correlated series modeled by a fractional noise with the same degree of correlations as the series to be segmented. We apply our algorithm to artificial series with long-range correlations and show that it systematically detects only the change-points produced by real nonstationarities and not those created by the correlations of the signal. Further, we apply the method to the sequence of the long arm of human chromosome 21, which is known to have long-range fractal correlations. We obtain only three segments that clearly correspond to the three regions of different G + C composition revealed by means of a multi-scale wavelet plot. Similar results have been obtained when segmenting all human chromosome sequences, showing the existence of previously unknown huge compositional superstructures in the human genome.
机译:分割是数据分析的标准方法,以识别将不间断时间序列划分为均匀段的变更点。然而,对于远程分形相关系列,大多数分割技术检测了虚假的变化点,这简单地是由于相关性引起的异质性而不是真正的非稳定性。为了避免这种贯彻,我们提出了一种分割算法,作为同质性的参考,而不是随机i.i.d。系列,一个由分数噪声建模的相关系列,与待分割的系列相同的相关程度。我们将算法应用于具有远程相关性的人工系列,并表明它仅系统地检测由真正的非间手率产生的变化点,而不是由信号的相关性产生的点。此外,我们将该方法应用于人染色体21的长臂的序列,已知具有远程分形相关性。我们仅获得三个段,该段清楚地对应于通过多尺度小波图揭示的不同G + C组成的三个区域。在分割所有人类基因组中,在分割所有人类染色体序列时已经获得了类似的结果,显示了人类基因组中先前未知的巨大成分上层建筑。

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