Determining the effect of structural perturbations on the eigenvalue spectra of networks is an important problem because the spectra characterize not only their topological structures, but also their dynamical behavior, such as synchronization and cascading processes on networks. Here we develop a theory for estimating the change of the largest eigenvalue of the adjacency matrix or the extreme eigenvalues of the graph Laplacian when small but arbitrary set of links are added or removed from the network. We demonstrate the effectiveness of our approximation schemes using both real and artificial networks, showing in particular that we can accurately obtain the spectral ranking of small subgraphs. We also propose a local iterative scheme whic...
Network representations are useful for describing the structure of a large variety of complex system...
We introduce and study the spectral evolution model, which characterizes the growth of large network...
Many interacting complex systems in biology, physics, technology and social systems can be represent...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Newman’s measure for (dis)assortativity, the linear degree correlation coefficient ?D, is reformulat...
The largest eigenvalue ? 1 of the adjacency matrix powerfully characterizes dynamic processes on net...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Newman’s measure for (dis)assortativity, the linear degree correlation coefficient ?D, is reformulat...
The largest eigenvalue ? 1 of the adjacency matrix powerfully characterizes dynamic processes on net...
We consider a network of interconnected dynamical systems. Spectral network identification consists i...
Network representations are useful for describing the structure of a large variety of complex system...
We introduce and study the spectral evolution model, which characterizes the growth of large network...
Many interacting complex systems in biology, physics, technology and social systems can be represent...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
The largest eigenvalue of a network’s adjacency matrix and its associated principal eigenvector are ...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Newman’s measure for (dis)assortativity, the linear degree correlation coefficient ?D, is reformulat...
The largest eigenvalue ? 1 of the adjacency matrix powerfully characterizes dynamic processes on net...
Dynamical networks are powerful tools for modeling a broad range of complex systems, including finan...
Newman’s measure for (dis)assortativity, the linear degree correlation coefficient ?D, is reformulat...
The largest eigenvalue ? 1 of the adjacency matrix powerfully characterizes dynamic processes on net...
We consider a network of interconnected dynamical systems. Spectral network identification consists i...
Network representations are useful for describing the structure of a large variety of complex system...
We introduce and study the spectral evolution model, which characterizes the growth of large network...
Many interacting complex systems in biology, physics, technology and social systems can be represent...