Integrating structural information and metadata, such as gender, social status, or interests, enriches networks and enables a better understanding of the large-scale structure of complex systems. However, existing approaches to augment networks with metadata for community detection only consider immediately adjacent nodes and cannot exploit the nonlocal relationships between metadata and large-scale network structure present in many spatial and social systems. Here, we develop a flow-based community detection framework based on the map equation that integrates network information and metadata of distant nodes and reveals more complex relationships. We analyze social and spatial networks and find that our methodology can detect functional me...
One feature discovered in the study of complex networks is community structure, in which vertices ar...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
Human mobility is known to be distributed across several orders of magnitude of physical distances, ...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Many complex systems are organized in the form of a network embedded in space. Important examples in...
Recently, it was recognized that the problems lying between the order and chaos require a new scient...
Across many scientific domains, there is a common need to automatically extract a simplified view or...
Community is an important attribute of Pocket Switched Networks (PSNs), since mobile devices are car...
Algorithms to find communities in networks rely just on structural information and search for cohesi...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Abstract The geospatial characteristics of transportation networks structurally constrain their feat...
Real-world networks are typically characterised by a non-trivial organization at the mesoscale, such...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
One feature discovered in the study of complex networks is community structure, in which vertices ar...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
Human mobility is known to be distributed across several orders of magnitude of physical distances, ...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Many complex systems are organized in the form of a network embedded in space. Important examples in...
Recently, it was recognized that the problems lying between the order and chaos require a new scient...
Across many scientific domains, there is a common need to automatically extract a simplified view or...
Community is an important attribute of Pocket Switched Networks (PSNs), since mobile devices are car...
Algorithms to find communities in networks rely just on structural information and search for cohesi...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Abstract The geospatial characteristics of transportation networks structurally constrain their feat...
Real-world networks are typically characterised by a non-trivial organization at the mesoscale, such...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
One feature discovered in the study of complex networks is community structure, in which vertices ar...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
Human mobility is known to be distributed across several orders of magnitude of physical distances, ...