Communication of signals among nodes in a complex network poses fundamental problems of efficiency and cost. Routing of messages along shortest paths requires global information about the topology, while spreading by diffusion, which operates according to local topological features, is informationally "cheap" but inefficient. We introduce a stochastic model for network communication that combines local and global information about the network topology to generate biased random walks on the network. The model generates a continuous spectrum of dynamics that converge onto shortest-path and random-walk (diffusion) communication processes at the limiting extremes. We implement the model on two cohorts of human connectome networks and investigat...
Understanding the mechanisms of neural communication in large-scale brain networks remains a major g...
<div><p>Graph theoretical analysis has played a key role in characterizing global features of the to...
Understanding the mechanisms of neural communication in largescale brain networks remains a major go...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Computational analysis of communication efficiency of brain networks often relies on graph-theoretic...
Computational analysis of communication efficiency of brain networks often relies on graph-theoretic...
© 2020 Caio Pimentel SeguinCommunication between neural elements underpins all aspects of brain func...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
: Interconnected systems have to route information to function properly: At the lowest scale neural ...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
Understanding the mechanisms of neural communication in large-scale brain networks remains a major g...
<div><p>Graph theoretical analysis has played a key role in characterizing global features of the to...
Understanding the mechanisms of neural communication in largescale brain networks remains a major go...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Communication of signals among nodes in a complex network poses fundamental problems of efficiency a...
Computational analysis of communication efficiency of brain networks often relies on graph-theoretic...
Computational analysis of communication efficiency of brain networks often relies on graph-theoretic...
© 2020 Caio Pimentel SeguinCommunication between neural elements underpins all aspects of brain func...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
: Interconnected systems have to route information to function properly: At the lowest scale neural ...
Graph theoretical analysis has played a key role in characterizing global features of the topology o...
Understanding the mechanisms of neural communication in large-scale brain networks remains a major g...
<div><p>Graph theoretical analysis has played a key role in characterizing global features of the to...
Understanding the mechanisms of neural communication in largescale brain networks remains a major go...