Generative algorithms for random graphs have yielded insights into the structure and evolution of real-world networks. Most networks exhibit a well-known set of properties, such as heavy-tailed degree distributions, clustering and community formation. Usually, random graph models consider only structural information, but many real-world networks also have labelled vertices and weighted edges. In this paper, we present a generative model for random graphs with discrete vertex labels and numeric edge weights. The weights are represented as a set of Beta Mixture Models (BMMs) with an arbitrary number of mixtures, which are learned from real-world networks. We propose a Bayesian Variational Inference (VI) approach, which yields an accurate esti...
Abstract One of the most influential recent results in network analysis is that many natural network...
International audienceRandom-graph mixture models are very popular for modelling real data networks....
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Generative algorithms for random graphs have yielded insights into the structure and evolution of re...
Abstract. Real-world graphs or networks tend to exhibit a well-known set of properties, such as heav...
We present a model for random simple graphs with power law (i.e., heavy-tailed) degree distributions...
This book supports researchers who need to generate random networks, or who are interested in the th...
This paper presents new methods for generation of random Bayesian networks. Such methods can be use...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
In the Probabilistic Graphical Model (PGM) community there is an interest around tractable models, i...
Markov Decision Processes (MDPs) and Bayesian Networks (BNs) are two very different but equally pro...
National audienceGenerating random graphs which verify a set of predefined properties is a major iss...
Labelled networks form a very common and important class of data, naturally appearing in numerous ap...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
Abstract One of the most influential recent results in network analysis is that many natural network...
International audienceRandom-graph mixture models are very popular for modelling real data networks....
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Generative algorithms for random graphs have yielded insights into the structure and evolution of re...
Abstract. Real-world graphs or networks tend to exhibit a well-known set of properties, such as heav...
We present a model for random simple graphs with power law (i.e., heavy-tailed) degree distributions...
This book supports researchers who need to generate random networks, or who are interested in the th...
This paper presents new methods for generation of random Bayesian networks. Such methods can be use...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
In the Probabilistic Graphical Model (PGM) community there is an interest around tractable models, i...
Markov Decision Processes (MDPs) and Bayesian Networks (BNs) are two very different but equally pro...
National audienceGenerating random graphs which verify a set of predefined properties is a major iss...
Labelled networks form a very common and important class of data, naturally appearing in numerous ap...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
Abstract One of the most influential recent results in network analysis is that many natural network...
International audienceRandom-graph mixture models are very popular for modelling real data networks....
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...