Extracting useful information from data is a fundamental challenge across disciplines as diverse as climate, neuroscience, genetics, and ecology. In the era of “big data,” data is ubiquitous, but appropriate methods are needed for gaining reliable information from the data. In this work, we consider a complex system, composed by interacting units, and aim at inferring which elements influence each other, directly from the observed data. The only assumption about the structure of the system is that it can be modeled by a network composed by a set of N units connected with L un-weighted and un-directed links, however, the structure of the connections is not known. In this situation, the inference of the underlying network is usually done by u...
ACKNOWLEDGMENTS E.B.M., M.S.B., and C.G.A. acknowledge the financial support provided by the EPSRC “...
Inferring the topology of a network using the knowledge of the signals of each of the interacting un...
We devise a machine learning technique to solve the general problem of inferring network links that ...
Extracting useful information from data is a fundamental challenge across disciplines as diverse as ...
The inference of an underlying network topology from local observations of a complex system composed...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
In this paper, we present a method that combines information-theoretical and statistical approaches ...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
Knowing brain connectivity is of great importance both in basic research and for clinical applicatio...
A system composed by interacting dynamical elements can be represented by a network, where the nodes...
<div><p>Knowing brain connectivity is of great importance both in basic research and for clinical ap...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
Identifying influential nodes in network dynamical systems requires the manipulation of topological ...
We investigate interaction networks that we derive from multivariate time series with methods freque...
The detection of causal effects among simultaneous observations provides knowledge about the underly...
ACKNOWLEDGMENTS E.B.M., M.S.B., and C.G.A. acknowledge the financial support provided by the EPSRC “...
Inferring the topology of a network using the knowledge of the signals of each of the interacting un...
We devise a machine learning technique to solve the general problem of inferring network links that ...
Extracting useful information from data is a fundamental challenge across disciplines as diverse as ...
The inference of an underlying network topology from local observations of a complex system composed...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
In this paper, we present a method that combines information-theoretical and statistical approaches ...
In neuroscience, data are typically generated from neural network activity. The resulting time serie...
Knowing brain connectivity is of great importance both in basic research and for clinical applicatio...
A system composed by interacting dynamical elements can be represented by a network, where the nodes...
<div><p>Knowing brain connectivity is of great importance both in basic research and for clinical ap...
Complex systems are increasingly studied as dynamical systems unfolding on complex networks, althoug...
Identifying influential nodes in network dynamical systems requires the manipulation of topological ...
We investigate interaction networks that we derive from multivariate time series with methods freque...
The detection of causal effects among simultaneous observations provides knowledge about the underly...
ACKNOWLEDGMENTS E.B.M., M.S.B., and C.G.A. acknowledge the financial support provided by the EPSRC “...
Inferring the topology of a network using the knowledge of the signals of each of the interacting un...
We devise a machine learning technique to solve the general problem of inferring network links that ...