Comprehending complex systems by simplifying and highlighting important dynamical patterns requires modeling and mapping higher-order network flows. However, complex systems come in many forms and demand a range of representations, including memory and multilayer networks, which in turn call for versatile community-detection algorithms to reveal important modular regularities in the flows. Here we show that various forms of higher-order network flows can be represented in a unified way with networks that distinguish physical nodes for representing a complex system's objects from state nodes for describing flows between the objects. Moreover, these so-called sparse memory networks allow the information-theoretic community detection method kn...
From traffic flows on road networks to electrical signals in brain networks, many real-world network...
Complex systems made of interacting elements are commonly abstracted as networks, in which nodes are...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
To better understand the organization of overlapping modules in large networks with respect to flow,...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Unreliable network data can cause community-detection methods to overfit and highlight spurious stru...
M.S. University of Hawaii at Manoa 2014.Includes bibliographical references.Complex networks is an i...
Abstract—Community-detection is a powerful approach to un-cover important structures in large networ...
Abstract—Community-detection is a powerful approach to un-cover important structures in large networ...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Several applied sciences model system dynamics with networks. Since networks often contain thousands...
There is increasing motivation to study bipartite complex networks as a separate category and, in pa...
To comprehend interconnected systems across the social and natural sciences, researchers have develo...
Hypergraphs offer an explicit formalism to describe multibody interactions in complex systems. To co...
From traffic flows on road networks to electrical signals in brain networks, many real-world network...
Complex systems made of interacting elements are commonly abstracted as networks, in which nodes are...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...
Comprehending complex systems by simplifying and highlighting important dynamical patterns requires ...
To better understand the organization of overlapping modules in large networks with respect to flow,...
Many real-world networks are so large that we must simplify their structure before we can extract us...
Unreliable network data can cause community-detection methods to overfit and highlight spurious stru...
M.S. University of Hawaii at Manoa 2014.Includes bibliographical references.Complex networks is an i...
Abstract—Community-detection is a powerful approach to un-cover important structures in large networ...
Abstract—Community-detection is a powerful approach to un-cover important structures in large networ...
Mapping network flows provides insight into the organization of networks, but even though many real ...
Several applied sciences model system dynamics with networks. Since networks often contain thousands...
There is increasing motivation to study bipartite complex networks as a separate category and, in pa...
To comprehend interconnected systems across the social and natural sciences, researchers have develo...
Hypergraphs offer an explicit formalism to describe multibody interactions in complex systems. To co...
From traffic flows on road networks to electrical signals in brain networks, many real-world network...
Complex systems made of interacting elements are commonly abstracted as networks, in which nodes are...
Integrating structural information and metadata, such as gender, social status, or interests, enrich...