Strategies based on the extraction of measures from ordinal patterns transformation, such as probability distributions and transition graphs, have reached relevant advancements in distinguishing different time series dynamics. However, the reliability of such measures depends on the appropriate selection of parameters and the need for large time series. In this paper we present a method for the characterization of distinct time series behaviors based on the probability of self-transitions, a measure extracted from their transformation onto ordinal patterns transition graphs. We validate our method by investigating the main characteristics of periodic, random, and chaotic time series. By the application of learning strategies, we precisely c...
This paper is devoted to change-point detection using only the ordinal structure of a time series. A...
In this work, we apply ordinal analysis of time series to the characterisation of neuronal activity....
As effective representations of complex systems, complex networks have attracted scholarly attention...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
We introduce a representation space to contrast chaotic with stochastic dynamics. Following the comp...
By appealing to a long list of different nonlinear maps we review the characterization of time serie...
Most of the time series in nature are a mixture of signals with deterministic and random dynamics. T...
Recently proposed ordinal networks not only afford novel methods of nonlinear time series analysis b...
Extracting relevant properties of empirical signals generated by nonlinear, stochastic, and high-dim...
We deal here with the issue of determinism versus randomness in time series. One wishes to identify ...
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
We deal here with the issue of determinism versus randomness in time series (TS), with the goal of i...
When calculating the Bandt and Pompe ordinal pattern distribution from given time series at depth D,...
Recently a new framework has been proposed to explore the dynamics of pseudoperiodic time series by ...
This paper is devoted to change-point detection using only the ordinal structure of a time series. A...
In this work, we apply ordinal analysis of time series to the characterisation of neuronal activity....
As effective representations of complex systems, complex networks have attracted scholarly attention...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
We introduce a representation space to contrast chaotic with stochastic dynamics. Following the comp...
By appealing to a long list of different nonlinear maps we review the characterization of time serie...
Most of the time series in nature are a mixture of signals with deterministic and random dynamics. T...
Recently proposed ordinal networks not only afford novel methods of nonlinear time series analysis b...
Extracting relevant properties of empirical signals generated by nonlinear, stochastic, and high-dim...
We deal here with the issue of determinism versus randomness in time series. One wishes to identify ...
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
We deal here with the issue of determinism versus randomness in time series (TS), with the goal of i...
When calculating the Bandt and Pompe ordinal pattern distribution from given time series at depth D,...
Recently a new framework has been proposed to explore the dynamics of pseudoperiodic time series by ...
This paper is devoted to change-point detection using only the ordinal structure of a time series. A...
In this work, we apply ordinal analysis of time series to the characterisation of neuronal activity....
As effective representations of complex systems, complex networks have attracted scholarly attention...