Fuelled by a desire for greater connectivity, networked systems now pervade our society at an unprecedented level that will affect it in ways we do not yet understand. In contrast, nature has already developed efficient networks that can instigate rapid response and consensus, when key elements are stimulated. We present a technique for identifying these key elements by investigating the relationships between a system's most dominant eigenvectors. This approach reveals the most effective vertices for leading a network to rapid consensus when stimulated, as well as the communities that form under their dynamical influence. In applying this technique, the effectiveness of starling flocks was found to be due, in part, to the low outdegree of e...
Flocks of starlings exhibit a remarkable ability to maintain cohesion as a group in highly uncertain...
SummaryIncreasingly detailed data on the network topology of neural circuits create a need for theor...
Biological and social networks are composed of heterogeneous nodes that contribute differentially to...
Consensus and decision-making are often analysed in the context of networks, with many studies focus...
Consensus and decision-making are often analysed in the context of networks, with many studies focus...
Eigenvectors of networked systems are known to reveal central, well-connected, network vertices. Her...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Social networks are everywhere in our everyday lives. We aggregate information, make decisions, and...
The network paradigm is used to gain insight into the structural root causes of the resilience of co...
Exciting and unexpected patterns can emerge when systems are highly connected, even when they are co...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
<div><p>Biological and social networks are composed of heterogeneous nodes that contribute different...
A major goal shared by neuroscience and collective behavior is to understand how dynamic interaction...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
Flocks of starlings exhibit a remarkable ability to maintain cohesion as a group in highly uncertain...
SummaryIncreasingly detailed data on the network topology of neural circuits create a need for theor...
Biological and social networks are composed of heterogeneous nodes that contribute differentially to...
Consensus and decision-making are often analysed in the context of networks, with many studies focus...
Consensus and decision-making are often analysed in the context of networks, with many studies focus...
Eigenvectors of networked systems are known to reveal central, well-connected, network vertices. Her...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Social networks are everywhere in our everyday lives. We aggregate information, make decisions, and...
The network paradigm is used to gain insight into the structural root causes of the resilience of co...
Exciting and unexpected patterns can emerge when systems are highly connected, even when they are co...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
<div><p>Biological and social networks are composed of heterogeneous nodes that contribute different...
A major goal shared by neuroscience and collective behavior is to understand how dynamic interaction...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
The goal of this PhD thesis is to exemplify how methods to model complex systems, mainly the languag...
Flocks of starlings exhibit a remarkable ability to maintain cohesion as a group in highly uncertain...
SummaryIncreasingly detailed data on the network topology of neural circuits create a need for theor...
Biological and social networks are composed of heterogeneous nodes that contribute differentially to...