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Refined composite multiscale permutation entropy to overcome multiscale permutation entropy length dependence

机译:精细复合多尺度置换熵克服多尺度置换熵长度依赖性

摘要

Multiscale permutation entropy (MPE) has recently been proposed to evaluate complexity of time series. MPE has numerous advantages over other multiscale complexity measures, such as its simplicity, robustness to noise and its low computational cost. However, MPE may loose statistical reliability as the scale factor increases, because the coarse-graining procedure used in the MPE algorithm reduces the length of the time series as the scale factor grows. To overcome this drawback, we introduce the refined composite MPE (RCMPE). Through applications on both synthetic and real data, we show that RCMPE is much less dependent on the signal length than MPE. In this sense, RCMPE is more reliable than MPE. RCMPE could therefore replace MPE for short times series or at large scale factors.
机译:最近提出了多尺度置换熵(MPE)来评估时间序列的复杂性。与其他多尺度复杂性度量相比,MPE具有许多优势,例如其简单性,抗噪声能力以及较低的计算成本。但是,MPE可能会随着比例因子的增加而失去统计可靠性,因为MPE算法中使用的粗粒度过程会随着比例因子的增加而减少时间序列的长度。为克服此缺点,我们引入了改进的复合MPE(RCMPE)。通过在合成数据和实际数据上的应用,我们显示出RCMPE对信号长度的依赖性远小于MPE。从这个意义上说,RCMPE比MPE更可靠。因此,RCMPE可以替代短时间序列或大规模因子的MPE。

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