Reconstructing network connectivity from the collective dynamics of a system typically requires access to its complete continuous-time evolution, although these are often experimentally inaccessible. Here we propose a theory for revealing physical connectivity of networked systems only from the event time series their intrinsic collective dynamics generate. Representing the patterns of event timings in an event space spanned by interevent and cross-event intervals, we reveal which other units directly influence the interevent times of any given unit. For illustration, we linearize an event-space mapping constructed from the spiking patterns in model neural circuits to reveal the presence or absence of synapses between any pair of neurons, a...
Biological networks display a variety of activity patterns reflecting a web of interactions that is ...
This dissertation deals with modeling and analysis of multi-neuronal spike train data. Brain tissue ...
The inference of an underlying network topology from local observations of a complex system composed...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Neurons spike on a millisecond time scale while behaviour typically spans hundreds of milliseconds t...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
Neural activity in awake animals exhibits a vast range of timescales giving rise to behavior that ca...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
© 2019 Author(s). In a complex system, the interactions between individual agents often lead to emer...
Biological networks display a variety of activity patterns reflecting a web of interactions that is ...
Estimating the connectivity of a network from events observed at each node has many applications. On...
We address the problem of estimating the effective connectivity of the brain network, using the inpu...
Population-wide synchronized rhythmic bursts of electrical activity are present in a variety of ne...
We study the temporal co-variation of network co-evolution via the cross-link structure of networks,...
Biological networks display a variety of activity patterns reflecting a web of interactions that is ...
This dissertation deals with modeling and analysis of multi-neuronal spike train data. Brain tissue ...
The inference of an underlying network topology from local observations of a complex system composed...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Reconstructing network connectivity from the collective dynamics of a system typically requires acce...
Neurons spike on a millisecond time scale while behaviour typically spans hundreds of milliseconds t...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
Neural activity in awake animals exhibits a vast range of timescales giving rise to behavior that ca...
Identifying the structure and dynamics of synaptic interactions between neurons is the first step to...
© 2019 Author(s). In a complex system, the interactions between individual agents often lead to emer...
Biological networks display a variety of activity patterns reflecting a web of interactions that is ...
Estimating the connectivity of a network from events observed at each node has many applications. On...
We address the problem of estimating the effective connectivity of the brain network, using the inpu...
Population-wide synchronized rhythmic bursts of electrical activity are present in a variety of ne...
We study the temporal co-variation of network co-evolution via the cross-link structure of networks,...
Biological networks display a variety of activity patterns reflecting a web of interactions that is ...
This dissertation deals with modeling and analysis of multi-neuronal spike train data. Brain tissue ...
The inference of an underlying network topology from local observations of a complex system composed...