Surrogate data for non-stationary signals
classification
chao-dyn
nlin.CD
keywords
datahypothesisnon-stationarynonlinearitynullprocesssurrogateaddress
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Standard tests for nonlinearity reject the null hypothesis of a Gaussian linear process whenever the data is non-stationary. Thus, they are not appropriate to distinguish nonlinearity from non-stationarity. We address the problem of generating proper surrogate data corresponding to the null hypothesis of an ARMA process with slowly varying coefficients.
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