We propose a communication-driven mechanism for predicting triadic closure in complex networks. It is mathematically formulated on the basis of communicability distance functions that account for the quality of communication between nodes in the network. We study 25 real-world networks and show that the proposed method correctly predicts 20% of triadic closures in these networks, in contrast to the 7.6% predicted by a random mechanism. We also show that the communication-driven method outperforms the random mechanism in explaining the clustering coefficient, average path length, and average communicability. The new method also displays some interesting features with regards to optimizing communication in networks
We introduce the concept of communicability angle between a pair of nodes in a graph. We provide str...
In the past few years there has been an explosion of social networks in the online world. Users floc...
Betweenness measures provide quantitative tools to pick out fine details from the massive amount of ...
We propose a communication-driven mechanism for predicting triadic closure in complex networks. It i...
R.K.D. and S.F. gratefully acknowledge MULTIPLEX, Grant No. 317532 of the European Commission
The triad is one of the most basic human groups in social networks. Understanding factors affecting ...
We propose a new measure of the communicability of a complex network, which is a broad generalizatio...
A closed triad is a group of three people who are connected with each other. It is the most basic un...
A fundamental problem in the study of complex networks is to provide quantitative measures of correl...
Complex networks are ubiquitous in our everyday life and can be used to model a wide variety of phen...
We study the properties of complex networks embedded in a Euclidean space of communicability distanc...
In the social sciences, the hypothesis of triadic closure contends that new links in a social contac...
We present a new network model accounting for homophily and triadic closure in the evolution of soci...
Social scientists have hypothesised that new social contacts arise preferentially between those who ...
We propose and analyse a class of evolving network models suitable for describing a dynamic topologi...
We introduce the concept of communicability angle between a pair of nodes in a graph. We provide str...
In the past few years there has been an explosion of social networks in the online world. Users floc...
Betweenness measures provide quantitative tools to pick out fine details from the massive amount of ...
We propose a communication-driven mechanism for predicting triadic closure in complex networks. It i...
R.K.D. and S.F. gratefully acknowledge MULTIPLEX, Grant No. 317532 of the European Commission
The triad is one of the most basic human groups in social networks. Understanding factors affecting ...
We propose a new measure of the communicability of a complex network, which is a broad generalizatio...
A closed triad is a group of three people who are connected with each other. It is the most basic un...
A fundamental problem in the study of complex networks is to provide quantitative measures of correl...
Complex networks are ubiquitous in our everyday life and can be used to model a wide variety of phen...
We study the properties of complex networks embedded in a Euclidean space of communicability distanc...
In the social sciences, the hypothesis of triadic closure contends that new links in a social contac...
We present a new network model accounting for homophily and triadic closure in the evolution of soci...
Social scientists have hypothesised that new social contacts arise preferentially between those who ...
We propose and analyse a class of evolving network models suitable for describing a dynamic topologi...
We introduce the concept of communicability angle between a pair of nodes in a graph. We provide str...
In the past few years there has been an explosion of social networks in the online world. Users floc...
Betweenness measures provide quantitative tools to pick out fine details from the massive amount of ...