Many systems are naturally represented by a multilayer network in which edges exist in multiple layers that encode different, but potentially related, types of interactions, and it is important to understand limitations on the detectability of community structure in these networks. Using random matrix theory, we analyze detectability limitations for multilayer (specifically, multiplex) stochastic block models (SBMs) in which L layers are derived from a common SBM. We study the effect of layer aggregation on detectability for several aggregation methods, including summation of the layers’ adjacency matrices for which we show the detectability limit vanishes as (L−1/2) with increasing number of layers, L. Importantly, we find a similar scalin...
International audienceCommunity detection in networks consists in finding groups of individuals such...
Modern network datasets are often composed of multiple layers, either as different views, time-varyi...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
Applied network science often involves preprocessing network data before applying a network-analysis...
Applied network science often involves preprocessing network data before applying a network-analysis...
Applied network science often involves preprocessing network data before applying a network-analysis...
In complex systems, the network of interactions we observe between systems components is the aggrega...
Over the last two decades, we have witnessed a massive explosion of our data collection abilities an...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
We introduce a novel model for multilayer weighted networks that accounts for global noise in additi...
The paper introduces the DIverse MultiPLEx (DIMPLE) network model where all layers of the network ha...
Multiplex networks have become increasingly more prevalent in many fields, and have emerged as a pow...
<p>Binary underlying influence matrices, examples of synchronization dynamics, and detection probabi...
We develop a Belief Propagation algorithm for community detection problem in multiplex networks, whi...
International audienceCommunity detection in networks consists in finding groups of individuals such...
Modern network datasets are often composed of multiple layers, either as different views, time-varyi...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...
Applied network science often involves preprocessing network data before applying a network-analysis...
Applied network science often involves preprocessing network data before applying a network-analysis...
Applied network science often involves preprocessing network data before applying a network-analysis...
In complex systems, the network of interactions we observe between systems components is the aggrega...
Over the last two decades, we have witnessed a massive explosion of our data collection abilities an...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
Characterizing large-scale organization in networks, including multilayer networks, is one of the mo...
We introduce a novel model for multilayer weighted networks that accounts for global noise in additi...
The paper introduces the DIverse MultiPLEx (DIMPLE) network model where all layers of the network ha...
Multiplex networks have become increasingly more prevalent in many fields, and have emerged as a pow...
<p>Binary underlying influence matrices, examples of synchronization dynamics, and detection probabi...
We develop a Belief Propagation algorithm for community detection problem in multiplex networks, whi...
International audienceCommunity detection in networks consists in finding groups of individuals such...
Modern network datasets are often composed of multiple layers, either as different views, time-varyi...
Networks are abstract representations of systems in which objects called "nodes" interact with each ...