The dynamics of a wide range of real systems, from email patterns to earthquakes, display a bursty, intermittent nature, characterized by short timeframes of intense activity followed by long times of no or reduced activity. The understanding of the origin of such bursty patterns is hindered by the lack of tools to compare different systems using a common framework. Here we propose to characterize the bursty nature of real signals using orthogonal measures quantifying two distinct mechanisms leading to burstiness: the interevent time distribution and the memory. We find that while the burstiness of natural phenomena is rooted in both the interevent time distribution and memory, for human dynamics memory is weak, and the bursty charact...
International audienceThis book provides a comprehensive overview on emergent bursty patterns in the...
The origin of the long-range memory in non-equilibrium systems is still an open problem as the pheno...
Neurons communicate with spikes, which are discrete events in time. Functional network models often ...
The dynamics of a wide range of real systems, from email patterns to earthquakes, display a bursty, ...
Inhomogeneous temporal processes, like those appearing in human communications, neuron spike trains,...
Temporal inhomogeneities in event sequences of natural and social phenomena have been characterized ...
Characterizing inhomogeneous temporal patterns in natural and social phenomena is important to under...
Inhomogeneous temporal processes in natural and social phenomena have been described by bursts that ...
Inhomogeneous temporal processes, like those appearing in human communications, neuron spike trains,...
A discrete-time random process is described, which can generate bursty sequences of events. A Bernou...
Temporal correlations of time series or event sequences in natural and social phenomena have been ch...
Temporal inhomogeneities observed in various natural and social phenomena have often been characteri...
Comprehensive characterization of non-Poissonian, bursty temporal patterns observed in various natur...
To understand the origin of bursty dynamics in natural and social processes we provide a general ana...
Response time (RT) is a commonly used measure of cognitive performance, which is usually characteriz...
International audienceThis book provides a comprehensive overview on emergent bursty patterns in the...
The origin of the long-range memory in non-equilibrium systems is still an open problem as the pheno...
Neurons communicate with spikes, which are discrete events in time. Functional network models often ...
The dynamics of a wide range of real systems, from email patterns to earthquakes, display a bursty, ...
Inhomogeneous temporal processes, like those appearing in human communications, neuron spike trains,...
Temporal inhomogeneities in event sequences of natural and social phenomena have been characterized ...
Characterizing inhomogeneous temporal patterns in natural and social phenomena is important to under...
Inhomogeneous temporal processes in natural and social phenomena have been described by bursts that ...
Inhomogeneous temporal processes, like those appearing in human communications, neuron spike trains,...
A discrete-time random process is described, which can generate bursty sequences of events. A Bernou...
Temporal correlations of time series or event sequences in natural and social phenomena have been ch...
Temporal inhomogeneities observed in various natural and social phenomena have often been characteri...
Comprehensive characterization of non-Poissonian, bursty temporal patterns observed in various natur...
To understand the origin of bursty dynamics in natural and social processes we provide a general ana...
Response time (RT) is a commonly used measure of cognitive performance, which is usually characteriz...
International audienceThis book provides a comprehensive overview on emergent bursty patterns in the...
The origin of the long-range memory in non-equilibrium systems is still an open problem as the pheno...
Neurons communicate with spikes, which are discrete events in time. Functional network models often ...