It has been established that the count of ordinal patterns, which do not occur in a time series, called forbidden patterns, is an effective measure for the detection of determinism in noisy data. A very recent study has shown that this measure is also partially robust against the effects of irregular sampling. In this paper, we extend said research with an emphasis on exploring the parameter space for the method's sole parameter-the length of the ordinal patterns-and find that the measure is more robust to under-sampling and irregular sampling than previously reported. Using numerically generated data from the Lorenz system and the hyper-chaotic Rossler system, we investigate the reliability of the relative proportion of ordinal patterns in...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
We derive a normalized version of the indicators of Savit and Green, and prove that these normalized...
A different method is proposed to detect deterministic structure from a pseudoperiodic time series. ...
In this paper, we introduce a model to describe the decay of the number of unobserved ordinal patter...
We deal here with the issue of determinism versus randomness in time series (TS), with the goal of i...
We deal here with the issue of determinism versus randomness in time series (TS), with the...
The prediction of a single observable time series has been achieved with varying degrees of success....
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
We deal here with the issue of determinism versus randomness in time series. One wishes to identify ...
In time series analysis, it has been considered of key importance to determine whether a complex tim...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
This paper discusses tests on time series for the presence of low dimensional deterministic chaos. E...
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
The number of missing ordinal patterns (NMP) is the number of ordinal patterns that do not appear in...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
We derive a normalized version of the indicators of Savit and Green, and prove that these normalized...
A different method is proposed to detect deterministic structure from a pseudoperiodic time series. ...
In this paper, we introduce a model to describe the decay of the number of unobserved ordinal patter...
We deal here with the issue of determinism versus randomness in time series (TS), with the goal of i...
We deal here with the issue of determinism versus randomness in time series (TS), with the...
The prediction of a single observable time series has been achieved with varying degrees of success....
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
We deal here with the issue of determinism versus randomness in time series. One wishes to identify ...
In time series analysis, it has been considered of key importance to determine whether a complex tim...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
This paper discusses tests on time series for the presence of low dimensional deterministic chaos. E...
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
The number of missing ordinal patterns (NMP) is the number of ordinal patterns that do not appear in...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
We derive a normalized version of the indicators of Savit and Green, and prove that these normalized...
A different method is proposed to detect deterministic structure from a pseudoperiodic time series. ...