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In Ref. [26], the flexibility of the approach was illustrated by a
simultaneous recording of the breath rate and the instantaneous heart rate of a
human subject during sleep. The interesting question was, how much of the
structure in the heart rate data can be explained by linear dependence on the
breath rate. In order to answer this question, surrogates were made that had
the same autocorrelation structure but also the same cross-correlation with
respect to the fixed input signal, the breath rate. While the linear
cross-correlation with the breath rate explained the coherent structure of the
heart rate, other features, in particular its asymmetry under time reversal,
remained unexplained. Possible explanations include artefacts due to the
peculiar way of deriving heart rate from inter-beat intervals, nonlinear
coupling to the breath activity, nonlinearity in the cardiac system, and
others.
Within the general framework, multivariate data can be treated very much the
same way as scalar time series. In the above example, we chose to use one of
the channels as a reference signal which was not randomised. The rationale
behind this was that we were not looking for nonlinear structure in the breath
rate itself and thus we didn't want to destroy any such structure in the
surrogates. In other cases, we can decide either to keep or to destroy
cross-correlations between channels. The former can be achieved by applying the
same permutations to all channels. Due to the limited experience we have so far
and the multitude of possible cases, multivariate problems have not been
included in the TISEAN implementation yet.
Next: Uneven sampling
Up: Various Examples
Previous: Including non-stationarity
Thomas Schreiber
Mon Aug 30 17:31:48 CEST 1999