Inferring the network topology from the dynamics of interacting units constitutes a topical challenge that drives research on its theory and applications across physics, mathematics, biology, and engineering. Most current inference methods rely on time series data recorded from all dynamical variables in the system. In applications, often only some of these time series are accessible, while other units or variables of all units are hidden, i.e. inaccessible or unobserved. For instance, in AC power grids, frequency measurements often are easily available whereas determining the phase relations among the oscillatory units requires much more effort. Here, we propose a network inference method that allows to reconstruct the full network topolog...
The interest for system identification in dynamic networks has increased recently with a wide variet...
We propose a conceptually novel method of reconstructing the topology of dynamical networks. By exam...
Motivated by the fact that transfer functions do not contain structural information about networks, ...
Inferring the network topology from the dynamics of interacting units constitutes a topical challeng...
Network topology plays a crucial role in determining a network's intrinsic dynamics and function, th...
Identifying influential nodes in network dynamical systems requires the manipulation of topological ...
We give an approximate solution to the difficult inverse problem of inferring the topology of an unk...
The inference of an underlying network topology from local observations of a complex system composed...
We give an approximate solution to the difficult inverse problem of inferring the topology of an unk...
The aim of this manuscript is to present a non-invasive method to recover the network structure of a...
We develop methods to efficiently reconstruct the topology and line parameters of a power grid from ...
Systems in engineering such as power systems, telecommunication systems, and distributed control sys...
Abstract Power grids, transportation systems, neural circuits and gene regulatory networks are just ...
Complex networks have found widespread real-world applications. One of the key problems in research ...
Extracting useful information from data is a fundamental challenge across disciplines as diverse as ...
The interest for system identification in dynamic networks has increased recently with a wide variet...
We propose a conceptually novel method of reconstructing the topology of dynamical networks. By exam...
Motivated by the fact that transfer functions do not contain structural information about networks, ...
Inferring the network topology from the dynamics of interacting units constitutes a topical challeng...
Network topology plays a crucial role in determining a network's intrinsic dynamics and function, th...
Identifying influential nodes in network dynamical systems requires the manipulation of topological ...
We give an approximate solution to the difficult inverse problem of inferring the topology of an unk...
The inference of an underlying network topology from local observations of a complex system composed...
We give an approximate solution to the difficult inverse problem of inferring the topology of an unk...
The aim of this manuscript is to present a non-invasive method to recover the network structure of a...
We develop methods to efficiently reconstruct the topology and line parameters of a power grid from ...
Systems in engineering such as power systems, telecommunication systems, and distributed control sys...
Abstract Power grids, transportation systems, neural circuits and gene regulatory networks are just ...
Complex networks have found widespread real-world applications. One of the key problems in research ...
Extracting useful information from data is a fundamental challenge across disciplines as diverse as ...
The interest for system identification in dynamic networks has increased recently with a wide variet...
We propose a conceptually novel method of reconstructing the topology of dynamical networks. By exam...
Motivated by the fact that transfer functions do not contain structural information about networks, ...