We present a model of network formation where entering nodes find other nodes to link to both completely at random and through search of the neighborhoods of these randomly met nodes. We show that this model exhibits the full spectrum of features that have been found to characterize large socially generated networks. Moreover, we derive the distribution of degree (number of links) across nodes, and show that while the upper tail of the distribution is approximately "scale-free," the lower tail may exhibit substantial curvature, just as in observed networks. We then fit the model to data from six networks. Besides offering a close fit of these diverse networks, the model allows us to impute the relative importance of search versus random att...
Studying the dynamics of information flow over social networks is important in understanding the rat...
A key challenge within the social network literature is the problem of network generation – that is,...
Various social networks share prominent features: clustering, rightskewed degree distribution, segre...
The study of complex networks has emerged over the past several years as a theme spanning many disci...
We present an algorithm for generating random networks with arbitrary degree distribution and cluste...
Social networking sites (SNS) have recently used by millions of people all over the world. An SNS is...
This dissertation investigates the community structure of web-like networks (i.e., large, random, re...
To study how economic fundamentals affect the formation of social networks, a model is needed that (...
We develop a new class of random-graph models for the statistical estimation of network formation th...
International audienceThe degree distributions of complex networks are usually considered to follow ...
We examine a simple economic model of network formation where agents benefit from indirect relations...
As for many complex systems, network structures are important as their backbone. From research on dy...
The last few years have led to a series of discoveries that uncovered statistical properties that ar...
Many real-world networks are intrinsically directed. Such networks include activation of genes, hype...
International audienceThe discovery of small world properties in real-world networks has revolutioni...
Studying the dynamics of information flow over social networks is important in understanding the rat...
A key challenge within the social network literature is the problem of network generation – that is,...
Various social networks share prominent features: clustering, rightskewed degree distribution, segre...
The study of complex networks has emerged over the past several years as a theme spanning many disci...
We present an algorithm for generating random networks with arbitrary degree distribution and cluste...
Social networking sites (SNS) have recently used by millions of people all over the world. An SNS is...
This dissertation investigates the community structure of web-like networks (i.e., large, random, re...
To study how economic fundamentals affect the formation of social networks, a model is needed that (...
We develop a new class of random-graph models for the statistical estimation of network formation th...
International audienceThe degree distributions of complex networks are usually considered to follow ...
We examine a simple economic model of network formation where agents benefit from indirect relations...
As for many complex systems, network structures are important as their backbone. From research on dy...
The last few years have led to a series of discoveries that uncovered statistical properties that ar...
Many real-world networks are intrinsically directed. Such networks include activation of genes, hype...
International audienceThe discovery of small world properties in real-world networks has revolutioni...
Studying the dynamics of information flow over social networks is important in understanding the rat...
A key challenge within the social network literature is the problem of network generation – that is,...
Various social networks share prominent features: clustering, rightskewed degree distribution, segre...