Markov Chain Monte Carlo (MCMC) algorithms are a widely-used algorithmic tool for sampling from high-dimensional distributions, a notable example is the equilibirum distribution of graphical models. The Glauber dynamics, also known as the Gibbs sampler, is the simplest example of an MCMC algorithm; the transitions of the chain update the configuration at a randomly chosen coordinate at each step. Several works have studied distributed versions of the Glauber dynamics and we extend these efforts to a more general family of Markov chains. An important combinatorial problem in the study of MCMC algorithms is random colorings. Given a graph $G$ of maximum degree $\Delta$ and an integer $k\geq\Delta+1$, the goal is to generate a random proper ve...
<p>We study a simple Markov chain, known as the Glauber dynamics, for generating a random <em>k</em>...
We study a simple Markov chain, known as the Glauber dynamics, for generating a random k-coloring o...
A well-known conjecture in computer science and statistical physics is that Glauber dynamics on the ...
Sampling constitutes an important tool in a variety of areas: from machine learning and combinatoria...
Sampling from the Gibbs distribution is a well studied problem in computer science as well as in sta...
We consider the problem of sampling a proper k-coloring of a graph of maximal degree Delta uniformly...
We study the mixing properties of the single-site Markov chain known as the Glauber dynamics for sam...
Approximate random $k$-colouring of a graph G is a well studied problem in computer science and sta...
Gibbs sampling also known as Glauber dynamics is a popular technique for sampling high dimensional d...
Graph colouring is arguably one of the most important issues in Graph Theory. However, many of the q...
Gibbs sampling also known as Glauber dynamics is a popular technique for sampling high dimensional d...
We study a simple Markov chain, known as the Glauber dynamics, for randomly sampling (proper) k-colo...
In this work we present a simple and efficient algorithm which, with high probability, provides an a...
AbstractWe study the problem of sampling uniformly at random from the set of k-colorings of a graph ...
We study a simple Markov chain, known as the Glauber dynamics, for generating a random k-coloring of...
<p>We study a simple Markov chain, known as the Glauber dynamics, for generating a random <em>k</em>...
We study a simple Markov chain, known as the Glauber dynamics, for generating a random k-coloring o...
A well-known conjecture in computer science and statistical physics is that Glauber dynamics on the ...
Sampling constitutes an important tool in a variety of areas: from machine learning and combinatoria...
Sampling from the Gibbs distribution is a well studied problem in computer science as well as in sta...
We consider the problem of sampling a proper k-coloring of a graph of maximal degree Delta uniformly...
We study the mixing properties of the single-site Markov chain known as the Glauber dynamics for sam...
Approximate random $k$-colouring of a graph G is a well studied problem in computer science and sta...
Gibbs sampling also known as Glauber dynamics is a popular technique for sampling high dimensional d...
Graph colouring is arguably one of the most important issues in Graph Theory. However, many of the q...
Gibbs sampling also known as Glauber dynamics is a popular technique for sampling high dimensional d...
We study a simple Markov chain, known as the Glauber dynamics, for randomly sampling (proper) k-colo...
In this work we present a simple and efficient algorithm which, with high probability, provides an a...
AbstractWe study the problem of sampling uniformly at random from the set of k-colorings of a graph ...
We study a simple Markov chain, known as the Glauber dynamics, for generating a random k-coloring of...
<p>We study a simple Markov chain, known as the Glauber dynamics, for generating a random <em>k</em>...
We study a simple Markov chain, known as the Glauber dynamics, for generating a random k-coloring o...
A well-known conjecture in computer science and statistical physics is that Glauber dynamics on the ...