A new method is proposed which allows a reconstruction of time series based on higher order multiscale statistics given by a hierarchical process. This method is able to model the time series not only on a specific scale but for a range of scales. It is possible to generate complete new time series, or to model the next steps for a given sequence of data. The method itself is based on the joint probability density which can be extracted directly from given data, thus no estimation of parameters is necessary. The results of this approach are shown for a real world dataset, namely for turbulence. The unconditional and conditional probability densities of the original and reconstructed time series are compared and the ability to reproduce both...
Traditional visualization of time series data often consists of plotting the time series values agai...
Our understanding of a variety of phenomena in physics, biology and economics crucially depends on t...
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...
Spatio-temporally extended nonlinear systems often exhibit a remarkable complexity in space and time...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
An algorithm is described that can generate random variants of a time series while preserving the pr...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
An algorithm is described that can generate random variants of a time series or image while preservi...
We present a fully automated method for the optimal state space reconstruction from univariate and m...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
We propose a new method to derive complex networks from time series data. Each data point in the tim...
Cover title.Includes bibliographical references (p. 38-39).Supported by the Air Force Office of Scie...
A method for resampling time series generated by a deterministic chaotic data generating process (DG...
In this thesis we are interested in the study and the modeling of the phenomenon of complexity emerg...
In this paper we introduce a multiscale symbolic information-theory approach for discriminating nonl...
Traditional visualization of time series data often consists of plotting the time series values agai...
Our understanding of a variety of phenomena in physics, biology and economics crucially depends on t...
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...
Spatio-temporally extended nonlinear systems often exhibit a remarkable complexity in space and time...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
An algorithm is described that can generate random variants of a time series while preserving the pr...
A technique termed gradual multifractal reconstruction (GMR) is formulated. A continuum is defined f...
An algorithm is described that can generate random variants of a time series or image while preservi...
We present a fully automated method for the optimal state space reconstruction from univariate and m...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
We propose a new method to derive complex networks from time series data. Each data point in the tim...
Cover title.Includes bibliographical references (p. 38-39).Supported by the Air Force Office of Scie...
A method for resampling time series generated by a deterministic chaotic data generating process (DG...
In this thesis we are interested in the study and the modeling of the phenomenon of complexity emerg...
In this paper we introduce a multiscale symbolic information-theory approach for discriminating nonl...
Traditional visualization of time series data often consists of plotting the time series values agai...
Our understanding of a variety of phenomena in physics, biology and economics crucially depends on t...
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...