Abstract:
The correlation dimension D2 and correlation entropy K2 are both important quantifiers in nonlinear time series analysis. However, use of D2 has been more common compared to K2 as a discriminating measure. One reason for this is that D2 is a static measure and can be easily evaluated from a time series. However, in many cases, especially those involving coloured noise, K2 is regarded as a more useful measure. Here we present an efficient algorithmic scheme to compute K2 directly from a time series data and show that K2 can be used as a more effective measure compared to D2 for analysing practical time series involving coloured noise.