2021
DOI: 10.3390/e23121609
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Quantifying Non-Stationarity with Information Theory

Abstract: We introduce an index based on information theory to quantify the stationarity of a stochastic process. The index compares on the one hand the information contained in the increment at the time scale τ of the process at time t with, on the other hand, the extra information in the variable at time t that is not present at time t−τ. By varying the scale τ, the index can explore a full range of scales. We thus obtain a multi-scale quantity that is not restricted to the first two moments of the density distributio… Show more

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Cited by 5 publications
(1 citation statement)
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“…One notable weakness is its assumption of signal stationarity, meaning that it assumes a constant frequency over the entire signal duration. This assumption may limit its effectiveness when dealing with non-stationary signals or those with rapidly changing frequencies [15] [37].…”
Section: Fourier and Wavelet Transformmentioning
confidence: 99%
“…One notable weakness is its assumption of signal stationarity, meaning that it assumes a constant frequency over the entire signal duration. This assumption may limit its effectiveness when dealing with non-stationary signals or those with rapidly changing frequencies [15] [37].…”
Section: Fourier and Wavelet Transformmentioning
confidence: 99%