In time series analysis, it has been considered of key importance to determine whether a complex time series measured from the system is regular, deterministically chaotic, or random. Recently, Gottwald and Melbourne have proposed an interesting test for chaos in deterministic systems. Their analyses suggest that the test may be universally applicable to any deterministic dynamical system. In order to fruitfully apply their test to complex experimental data, it is important to understand the mechanism for the test to work, and how it behaves when it is employed to analyze various types of data, including those not from clean deterministic systems. We find that the essence of their test can be described as to first constructing a random walk...
In this paper, we present a theoretical justification of the 0–1 test for chaos. In particular, we s...
To show that a mathematical model exhibits chaotic behaviour does not prove that chaos is also prese...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
The 0-1 test is a novel test that has been recently suggested to detect low-dimensional chaos in tim...
We present a new method for analyzing time series which is designed to extract inherent deterministi...
Recently Hu, Tung, Gao and Cao investigated the 0-1 test for chaos. By looking at random data and at...
It has been established that the count of ordinal patterns, which do not occur in a time series, cal...
We derive a normalized version of the indicators of Savit and Green, and prove that these normalized...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
This paper discusses tests on time series for the presence of low dimensional deterministic chaos. E...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
The prediction of a single observable time series has been achieved with varying degrees of success....
The novel chaos detection method (i.e., 0–1 test for chaos) determines the median Km(c) of asymptoti...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
In this paper, we present a theoretical justification of the 0–1 test for chaos. In particular, we s...
To show that a mathematical model exhibits chaotic behaviour does not prove that chaos is also prese...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...
A reliable and efficient method to distinguish between chaotic and non-chaotic behaviour in noise-co...
The 0-1 test is a novel test that has been recently suggested to detect low-dimensional chaos in tim...
We present a new method for analyzing time series which is designed to extract inherent deterministi...
Recently Hu, Tung, Gao and Cao investigated the 0-1 test for chaos. By looking at random data and at...
It has been established that the count of ordinal patterns, which do not occur in a time series, cal...
We derive a normalized version of the indicators of Savit and Green, and prove that these normalized...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
This paper discusses tests on time series for the presence of low dimensional deterministic chaos. E...
We describe a new test for determining whether a given deterministic dynamical system is chaotic or ...
The prediction of a single observable time series has been achieved with varying degrees of success....
The novel chaos detection method (i.e., 0–1 test for chaos) determines the median Km(c) of asymptoti...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
In this paper, we present a theoretical justification of the 0–1 test for chaos. In particular, we s...
To show that a mathematical model exhibits chaotic behaviour does not prove that chaos is also prese...
We present a direct and dynamical method to distinguish low-dimensional deterministic chaos from noi...