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Flatness bias of AAFT surrogates

It is argued in Ref. [30] that for short and strongly correlated sequences, the AAFT algorithm can yield an incorrect test since it introduces a bias towards a slightly flatter spectrum. In Fig. 3 we see power spectral estimates of a clinical data set and of 19 AAFT surrogates. The data is taken from data set B of the Santa Fe Institute time series contest [31]. It consists of 4096 samples of the breath rate of a patient with sleep apnoea. The sampling interval is 0.5 seconds. The discrepancy of the spectra is significant. A bias towards a white spectrum is noted: power is taken away from the main peak to enhance the low and high frequencies.

 figure1037
Figure:   Discrepancy of the power spectra of human breath rate data (solid line) and 19 AAFT surrogates (dashed lines). Here the power spectra have been computed with a square window of length 64.

Heuristically, the flatness bias can be understood as follows. Amplitude adjustment attempts to invert the unknown measurement function tex2html_wrap_inline1908 empirically. The estimate tex2html_wrap_inline2000 of the inverse obtained by the rescaling of a finite sample to values drawn from a Gaussian distribution is expected to be consistent but it is not exact for finite N. The sampling fluctuations of tex2html_wrap_inline2004 will be essentially independent of n and thus spectrally white. Consequently, Gaussian scaling amounts to adding a white component to the spectrum, which therefore tends to become flatter under the procedure. Since such a bias can lead to spurious results, surrogates have to be refined before a test can be performed.


next up previous
Next: Iteratively refined surrogates Up: Fourier based surrogates Previous: Rescaled Gaussian linear process

Thomas Schreiber
Mon Aug 30 17:31:48 CEST 1999