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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >ANALYZING EXACT FRACTAL TIME SERIES - EVALUATING DISPERSIONAL ANALYSIS AND RESCALED RANGE METHODS
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ANALYZING EXACT FRACTAL TIME SERIES - EVALUATING DISPERSIONAL ANALYSIS AND RESCALED RANGE METHODS

机译:分形时间序列的精确分析-估计色散分析和确定范围法。

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摘要

Precise reference signals are required to evaluate methods for characterizing a fractal time series. Here we use fGp (fractional Gaussian process) to generate exact fractional Gaussian noise (fGn) reference signals for one-dimensional time series. The average autocorrelation of multiple realizations of fGn converges to the theoretically expected autocorrelation. Two methods commonly used to generate fractal time series, an approximate spectral synthesis (SSM) method and the successive random addition (SRA) method, do not give the correct correlation structures and should be abandoned. Time series from fGp were used to test how well several versions of rescaled range analysis (RIS) and dispersional analysis (Disp) estimate the Hurst coefficient(0 < H < 1.0). Disp is unbiased for H < 0.9 and series length N greater than or equal to 1024, but underestimates H when H > 0.9. R/S-detrended overestimates H for time series with H < 0.7 and underestimates H for H > 0.7. Estimates of H((H) over cap)) from all versions of Disp usually have lower bias and variance than those from R/S. All versions of dispersional analysis, Disp, now tested on fGp, are better than we previously thought and are recommended for evaluating time series as long-memory processes. [References: 24]
机译:需要精确的参考信号来评估表征分形时间序列的方法。在这里,我们使用fGp(分数高斯过程)为一维时间序列生成精确的分数高斯噪声(fGn)参考信号。 fGn的多个实现的平均自相关收敛于理论上期望的自相关。通常使用两种方法来生成分形时间序列,一种是近似频谱合成(SSM)方法,另一种是连续随机加法(SRA)方法,它们不能给出正确的相关结构,因此应该放弃。使用fGp的时间序列测试了多个版本的重标范围分析(RIS)和色散分析(Disp)估计赫斯特系数(0 0.9时,会低估H。对于H <0.7的时间序列,R / S趋势被高估了H,而对于H> 0.7则低估了H。所有Disp版本的H((上限))的估计值通常比R / S中的估计值具有更低的偏差和方差。现在在fGp上测试的所有版本的色散分析Disp都比我们以前认为的要好,建议将其作为长内存过程评估时间序列。 [参考:24]

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