Sheppard L W, Stefanovska A, McClintock P V E
Department of Physics, Lancaster University, Lancaster, United Kingdom.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Apr;85(4 Pt 2):046205. doi: 10.1103/PhysRevE.85.046205. Epub 2012 Apr 9.
We present a method for the testing of significance when evaluating the coherence of two oscillatory time series that may have variable amplitude and frequency. It is based on evaluating the self-correlations of the time series. We demonstrate our approach by the application of wavelet-based coherence measures to artificial and physiological examples. Because coherence measures of this kind are strongly biased by the spectral characteristics of the time series, we evaluate significance by estimation of the characteristics of the distribution of values that may occur due to chance associations in the data. The expectation value and standard deviation of this distribution are shown to depend on the autocorrelations and higher order statistics of the data. Where the coherence value falls outside this distribution, we may conclude that there is a causal relationship between the signals regardless of their spectral similarities or differences.
我们提出了一种在评估两个可能具有可变幅度和频率的振荡时间序列的相干性时进行显著性检验的方法。该方法基于评估时间序列的自相关。我们通过将基于小波的相干性度量应用于人工和生理实例来展示我们的方法。由于这类相干性度量会受到时间序列频谱特征的强烈影响,我们通过估计数据中偶然关联可能产生的值分布的特征来评估显著性。结果表明,该分布的期望值和标准差取决于数据的自相关和高阶统计量。当相干值落在该分布之外时,无论信号的频谱相似性或差异如何,我们都可以得出信号之间存在因果关系的结论。