Publication | Open Access
Generating surrogate data for time series with several simultaneously measured variables
640
Citations
14
References
1994
Year
EngineeringSurrogate DataData SurrogateData GenerationData ScienceIndependent Component AnalysisTimefrequency AnalysisStatisticsNonlinear Time SeriesMultidimensional AnalysisNeuroimagingForecastingFunctional Data AnalysisSignal ProcessingPhase-randomized Fourier-transform AlgorithmEeg Signal ProcessingNeuroscienceMultivariate AnalysisWaveform AnalysisData Modeling
We propose an extension to multivariate time series of the phase-randomized Fourier-transform algorithm for generating surrogate data. Such surrogate data sets must mimic not only the autocorrelations of each of the variables in the original data set, they must mimic the cross correlations between all the variables as well. The method is applied both to a simulated example (the three components of the Lorentz equations) and to data from a multichannel electroencephalogram.
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