We give an efficient perfect sampling algorithm for weighted, connected induced subgraphs (or graphlets) of rooted, bounded degree graphs. Our algorithm utilizes a vertex-percolation process with a carefully chosen rejection filter and works under a percolation subcriticality condition. We show that this condition is optimal in the sense that the task of (approximately) sampling weighted rooted graphlets becomes impossible in finite expected time for infinite graphs and intractable for finite graphs when the condition does not hold. We apply our sampling algorithm as a subroutine to give near linear-time perfect sampling algorithms for polymer models and weighted non-rooted graphlets in finite graphs, two widely studied yet very different p...
International audienceGiven a weighted undirected graph, this paper focuses on the sampling problem ...
We discuss uniform sampling algorithms that are based on stochastic growth methods, using sampling o...
<p>We develop algorithms to approximately count perfect matchings in bipartite graphs (or permanents...
We give an efficient perfect sampling algorithm for weighted, connected induced subgraphs (or graphl...
The polymer model framework is a classical tool from statistical mechanics that has recently been us...
A spin system is a framework in which the vertices of a graph are assigned spins from a finite set. ...
Efficient algorithms for approximate counting and sampling in spin systems typically apply in the so...
Uniform sampling from graphical realizations of a given degree sequence is a fundamental component i...
Uniform sampling from graphical realizations of a given degree sequence is a fundamental component i...
Random graph generation is the foundation of the statistical study of complex networks, which are co...
Abstract. We discuss uniform sampling algorithms that are based on stochastic growth methods, using ...
Abstract—The problem of efficiently drawing samples from a Gaussian graphical model or Gaussian Mark...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
| openaire: EC/H2020/654024/EU//SoBigDataUnderstanding the local structure of a graph provides valua...
We consider local Markov chain Monte–Carlo algorithms for sampling from the weighted distribution of...
International audienceGiven a weighted undirected graph, this paper focuses on the sampling problem ...
We discuss uniform sampling algorithms that are based on stochastic growth methods, using sampling o...
<p>We develop algorithms to approximately count perfect matchings in bipartite graphs (or permanents...
We give an efficient perfect sampling algorithm for weighted, connected induced subgraphs (or graphl...
The polymer model framework is a classical tool from statistical mechanics that has recently been us...
A spin system is a framework in which the vertices of a graph are assigned spins from a finite set. ...
Efficient algorithms for approximate counting and sampling in spin systems typically apply in the so...
Uniform sampling from graphical realizations of a given degree sequence is a fundamental component i...
Uniform sampling from graphical realizations of a given degree sequence is a fundamental component i...
Random graph generation is the foundation of the statistical study of complex networks, which are co...
Abstract. We discuss uniform sampling algorithms that are based on stochastic growth methods, using ...
Abstract—The problem of efficiently drawing samples from a Gaussian graphical model or Gaussian Mark...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
| openaire: EC/H2020/654024/EU//SoBigDataUnderstanding the local structure of a graph provides valua...
We consider local Markov chain Monte–Carlo algorithms for sampling from the weighted distribution of...
International audienceGiven a weighted undirected graph, this paper focuses on the sampling problem ...
We discuss uniform sampling algorithms that are based on stochastic growth methods, using sampling o...
<p>We develop algorithms to approximately count perfect matchings in bipartite graphs (or permanents...