Time series analysis has proven to be a powerful method to characterize several phenomena in biology, neuroscience and economics, and to understand some of their underlying dynamical features. Despite a plethora of methods have been proposed for the analysis of multivariate time series, most of them neglect the effect of non-pairwise interactions on the emerging dynamics. Here, we propose a novel framework to characterize the temporal evolution of higher-order dependencies within multivariate time series. Using network analysis and topology, we show that, unlike traditional tools based on pairwise statistics, our framework robustly differentiates various spatiotemporal regimes of coupled chaotic maps, including chaotic dynamical phases and ...
The present work introduces an analysis framework for the detec-tion of transient synchronized state...
Visibility algorithms are a family of methods that map time series into graphs, such that the tools ...
Abstract. For multivariate data, dependence beyond pair-wise can be important. This is true, for exa...
Time series analysis has proven to be a powerful method to characterize several phenomena in biology...
Our understanding of a variety of phenomena in physics, biology and economics crucially depends on t...
7 pages, 4 figures. Original title was "From multivariate time series to multiplex visibility graphs
While the standard network description of complex systems is based on quantifying the link between p...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
In many complex systems, elements interact via time-varying network topologies.Recent research shows...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
While the standard network description of complex systems is based on quantifying the link between ...
The multiscale phenomenon widely exists in nonlinear complex systems. One efficient way to character...
As a relatively new field, network neuroscience has tended to focus on aggregate behaviours of the b...
The present work introduces an analysis framework for the detec-tion of transient synchronized state...
Visibility algorithms are a family of methods that map time series into graphs, such that the tools ...
Abstract. For multivariate data, dependence beyond pair-wise can be important. This is true, for exa...
Time series analysis has proven to be a powerful method to characterize several phenomena in biology...
Our understanding of a variety of phenomena in physics, biology and economics crucially depends on t...
7 pages, 4 figures. Original title was "From multivariate time series to multiplex visibility graphs
While the standard network description of complex systems is based on quantifying the link between p...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
In many complex systems, elements interact via time-varying network topologies.Recent research shows...
Many complex systems in physics, biology and engineering are modeled as dynamical networks and descr...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
While the standard network description of complex systems is based on quantifying the link between ...
The multiscale phenomenon widely exists in nonlinear complex systems. One efficient way to character...
As a relatively new field, network neuroscience has tended to focus on aggregate behaviours of the b...
The present work introduces an analysis framework for the detec-tion of transient synchronized state...
Visibility algorithms are a family of methods that map time series into graphs, such that the tools ...
Abstract. For multivariate data, dependence beyond pair-wise can be important. This is true, for exa...