Because of the huge number of graphs possible even with a small number of nodes, inference on network structure is known to be a challenging problem. Generating large random directed graphs with prescribed probabilities of occurrences of some meaningful patterns (motifs) is also difficult. We show how to generate such random graphs according to a formal probabilistic representation, using fast Markov chain Monte Carlo methods to sample them. As an illustration, we generate realistic graphs with several hundred nodes mimicking a gene transcription interaction network in Escherichia coli
Getting and analyzing biological interaction networks is at the core of systems biology. To help und...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
Markov Decision Processes (MDPs) and Bayesian Networks (BNs) are two very different but equally pro...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
This book supports researchers who need to generate random networks, or who are interested in the th...
• Network motifs are at the core of modern studies on biological networks, trying to encompass globa...
National audienceGenerating random graphs which verify a set of predefined properties is a major iss...
This paper presents new methods for generation of random Bayesian networks. Such methods can be use...
Graph models for real-world complex networks such as the Internet, the WWW and biological networks a...
Network motifs are at the core of modern studies on biological networks, trying to encompass global ...
When researching relationships between data entities, the most natural way of presenting them is by ...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Abstract Background Identifying motifs in biological networks is essential in uncovering key functio...
Local regulatory motifs are identified in the transcription regulatory network of the most studied m...
Network motif discovery is the problem of finding subgraphs of a network that occur more frequently ...
Getting and analyzing biological interaction networks is at the core of systems biology. To help und...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
Markov Decision Processes (MDPs) and Bayesian Networks (BNs) are two very different but equally pro...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
This book supports researchers who need to generate random networks, or who are interested in the th...
• Network motifs are at the core of modern studies on biological networks, trying to encompass globa...
National audienceGenerating random graphs which verify a set of predefined properties is a major iss...
This paper presents new methods for generation of random Bayesian networks. Such methods can be use...
Graph models for real-world complex networks such as the Internet, the WWW and biological networks a...
Network motifs are at the core of modern studies on biological networks, trying to encompass global ...
When researching relationships between data entities, the most natural way of presenting them is by ...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Abstract Background Identifying motifs in biological networks is essential in uncovering key functio...
Local regulatory motifs are identified in the transcription regulatory network of the most studied m...
Network motif discovery is the problem of finding subgraphs of a network that occur more frequently ...
Getting and analyzing biological interaction networks is at the core of systems biology. To help und...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
Markov Decision Processes (MDPs) and Bayesian Networks (BNs) are two very different but equally pro...