We address the issue of recognizing determinism in a time series. Specifically, we employ the method of singular-value decomposition (SVD) to derive the eigenvalue spectra of the trajectory matrices constructed from a number of scalar time series, mainly white noise and chaotic signals, where a very large embedding dimension is used. The results suggest that the SVD eigenvalue spectrum can be employed as a measure of determinism and an estimate for the strength of a noise contained in the time series can be deduced
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
: This paper reports on the application to field measurements of time series methods developed on th...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
We review a relatively new statistical test that may be applied to determine whether an observed tim...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
Abstract—We review a relatively new statistical test that may be applied to determine whether an obs...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
textabstractWe address the problem of data-driven pattern identification and outlier detection in ti...
The space overlap of an attractor reconstructed from a time series with a similarly reconstructed at...
Matrix Singular Value Decomposition (SVD) and its application to problems in signal processing is ex...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
: This paper reports on the application to field measurements of time series methods developed on th...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
We review a relatively new statistical test that may be applied to determine whether an observed tim...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
Abstract—We review a relatively new statistical test that may be applied to determine whether an obs...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
textabstractWe address the problem of data-driven pattern identification and outlier detection in ti...
The space overlap of an attractor reconstructed from a time series with a similarly reconstructed at...
Matrix Singular Value Decomposition (SVD) and its application to problems in signal processing is ex...
We address the problem of data-driven pattern identification and outlier detection in time series. T...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
: This paper reports on the application to field measurements of time series methods developed on th...
The treatment of noise in chaotic time series remains a challenging subject in nonlinear time series...