Unreliable network data can cause community-detection methods to overfit and highlight spurious structures with misleading information about the organization and function of complex systems. Here we show how to detect significant flow-based communities in sparse networks with missing links using the map equation. Since the map equation builds on Shannon entropy estimation, it assumes complete data such that analyzing undersampled networks can lead to overfitting. To overcome this problem, we incorporate a Bayesian approach with assumptions about network uncertainties into the map equation framework. Results in both synthetic and real-world networks show that the Bayesian estimate of the map equation provides a principled approach to reveali...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Network structures, such as social networks, web graphs and networks from systems biology, play impo...
Unreliable network data can cause community-detection methods to overfit and highlight spurious stru...
Detecting significant community structure in networks with incomplete observations is challenging be...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
To better understand the organization of overlapping modules in large networks with respect to flow,...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Complex, dynamic networks underlie many systems, and understanding these networks is the concern of ...
To connect structure, dynamics and function in systems with multibody interactions, network scientis...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Network structures, such as social networks, web graphs and networks from systems biology, play impo...
Unreliable network data can cause community-detection methods to overfit and highlight spurious stru...
Detecting significant community structure in networks with incomplete observations is challenging be...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
To better understand the organization of overlapping modules in large networks with respect to flow,...
Discovering communities in complex networks is essential in performing analyses, such as dynamics of...
Complex, dynamic networks underlie many systems, and understanding these networks is the concern of ...
To connect structure, dynamics and function in systems with multibody interactions, network scientis...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Researchers use community-detection algorithms to reveal large-scale organization in biological and ...
Network structures, such as social networks, web graphs and networks from systems biology, play impo...