Krivelevich and Patkós conjectured in 2009 that χ(G(n, p)) ∼ χ=(G(n, p)) ∼ χ∗=(G(n, p)) for C/n < p < 1 − ε, where ε > 0. We prove this conjecture for n−1+ε1 < p < 1 − ε2 where ε1, ε2 > 0. We investigate several measures that have been proposed to indicate centrality of nodes in networks, and find examples of networks where they fail to distinguish any of the vertices nodes from one another. We develop a new method to investigate core-periphery structure, which entails identifying densely-connected core nodes and sparsely-connected periphery nodes. Finally, we present an experiment and an analysis of empirical networks, functional human brain networks. We found that reconfiguration patterns of dynamic communities can be us...
We introduce several novel and computationally efficient methods for detecting “core-periphery struc...
A standard approach to reduce the complexity of very large networks is to group together sets of nod...
We introduce several novel and computationally efficient methods for detecting “core– periphery stru...
Krivelevich and Patkós conjectured in 2009 that χ(G(n, p)) ∼ χ=(G(n, p)) ∼ χ∗=(G(n, p)) for C/n whe...
none3noTwo concepts of centrality have been defined in complex networks. The first considers the cen...
We propose a statistical model for graphs with a core-periphery structure. We give a precise notion ...
A network measure called knotty-centrality is defined that quantifies the extent to which a given su...
<div><p>A network measure called knotty-centrality is defined that quantifies the extent to which a ...
We study core-periphery structure in networks using inference methods based on a flexible network mo...
Recent developments in network theory have allowed for the study of the structure and function of th...
A network measure called knotty-centrality is defined that quantifies the extent to which a given su...
While studies of meso-scale structures in networks often focus on community structure, core– periphe...
A standard approach to reduce the complexity of very large networks is to group together sets of nod...
The calculation of centrality measures is common practice in the study of networks, as they attempt ...
Intermediate-scale (or 'meso-scale') structures in networks have received considerable attention, as...
We introduce several novel and computationally efficient methods for detecting “core-periphery struc...
A standard approach to reduce the complexity of very large networks is to group together sets of nod...
We introduce several novel and computationally efficient methods for detecting “core– periphery stru...
Krivelevich and Patkós conjectured in 2009 that χ(G(n, p)) ∼ χ=(G(n, p)) ∼ χ∗=(G(n, p)) for C/n whe...
none3noTwo concepts of centrality have been defined in complex networks. The first considers the cen...
We propose a statistical model for graphs with a core-periphery structure. We give a precise notion ...
A network measure called knotty-centrality is defined that quantifies the extent to which a given su...
<div><p>A network measure called knotty-centrality is defined that quantifies the extent to which a ...
We study core-periphery structure in networks using inference methods based on a flexible network mo...
Recent developments in network theory have allowed for the study of the structure and function of th...
A network measure called knotty-centrality is defined that quantifies the extent to which a given su...
While studies of meso-scale structures in networks often focus on community structure, core– periphe...
A standard approach to reduce the complexity of very large networks is to group together sets of nod...
The calculation of centrality measures is common practice in the study of networks, as they attempt ...
Intermediate-scale (or 'meso-scale') structures in networks have received considerable attention, as...
We introduce several novel and computationally efficient methods for detecting “core-periphery struc...
A standard approach to reduce the complexity of very large networks is to group together sets of nod...
We introduce several novel and computationally efficient methods for detecting “core– periphery stru...