Networks are a convenient way to represent complex systems of interacting entities. Many networks contain “communities” of nodes that are more densely connected to each other than to nodes in the rest of the network. In this paper, we investigate the detection of communities in temporal networks represented as multilayer networks. As a focal example, we study time-dependent financialasset correlation networks. We first argue that the use of the “modularity” quality function—which is defined by comparing edge weights in an observed network to expected edge weights in a “null network”—is application-dependent. We differentiate between “null networks” and “null models” in our discussion of modularity maximization, and we highlight that the sam...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Communities are virtually ubiquitous in real-world networks, and the statistic of modularity index Q...
International audienceCommunity detection in single layer, isolated networks has been extensively st...
Networks are a convenient way to represent complex systems of interacting entities. Many networks co...
Networks are a convenient way to represent complex systems of interacting entities. Many networks co...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
Many of the algorithms used for community detection in temporal networks have been adapted from stat...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
Abstract—We present a principled approach for detecting overlapping temporal community structure in ...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
Dynamic community detection has been an attractive topic due to its ability to reveal the evolutiona...
We describe techniques for the robust detection of community structure in some classes of time-depen...
Dynamic community detection has been an attractive topic due to its ability to reveal the evolutiona...
A prominent problem in network science is the algorithmic detection of tightly-connected groups of n...
We describe techniques for the robust detection of community structure in some classes of time-depen...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Communities are virtually ubiquitous in real-world networks, and the statistic of modularity index Q...
International audienceCommunity detection in single layer, isolated networks has been extensively st...
Networks are a convenient way to represent complex systems of interacting entities. Many networks co...
Networks are a convenient way to represent complex systems of interacting entities. Many networks co...
Many real-world applications in the social, biological, and physical sciences involve large systems ...
Many of the algorithms used for community detection in temporal networks have been adapted from stat...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
Abstract—We present a principled approach for detecting overlapping temporal community structure in ...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
Dynamic community detection has been an attractive topic due to its ability to reveal the evolutiona...
We describe techniques for the robust detection of community structure in some classes of time-depen...
Dynamic community detection has been an attractive topic due to its ability to reveal the evolutiona...
A prominent problem in network science is the algorithmic detection of tightly-connected groups of n...
We describe techniques for the robust detection of community structure in some classes of time-depen...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Communities are virtually ubiquitous in real-world networks, and the statistic of modularity index Q...
International audienceCommunity detection in single layer, isolated networks has been extensively st...