This paper addresses the problem of designing efficient sampling moves in order to accelerate the convergence of MCMC methods. The Partially collapsed Gibbs sampler (PCGS) takes advantage of variable reordering, marginalization and trimming to accelerate the convergence of the traditional Gibbs sampler. This work studies two specific moves which allow the convergence of the PCGS to be further improved. It considers a Bayesian model where structured sparsity is enforced using a multivariate Bernoulli Laplacian prior. The posterior distribution associated with this model depends on mixed discrete and continuous random vectors. Due to the discrete part of the posterior, the conventional PCGS gets easily stuck around local maxima. Two Metropoli...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
Markov chain Monte Carlo (MCMC) methods form a rich class of computational techniques that help its ...
International audienceThis paper addresses the problem of designing efficient sampling moves in orde...
International audienceThis paper addresses the problem of designing efficient sampling moves in orde...
In this paper, we propose a hierarchical Bayesian model approximating the ℓ20 mixed-norm regularizat...
This paper deals with EEG source localization. The aim is to perform spatially coherent focal locali...
International audienceThis paper deals with EEG source localization. The aim is to perform spatially...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
<div><p>The partially collapsed Gibbs (PCG) sampler offers a new strategy for improving the converge...
The Partially Collapsed Gibbs (PCG) sampler offers a new strategy for improving the con-vergence of ...
The partially collapsed Gibbs (PCG) sampler offers a new strategy for improving the convergence of a...
We consider Markov chain Monte Carlo algorithms which combine Gibbs updates with Metropolis-Hastings...
this article we investigate the relationship between the two popular algorithms, the EM algorithm an...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
Markov chain Monte Carlo (MCMC) methods form a rich class of computational techniques that help its ...
International audienceThis paper addresses the problem of designing efficient sampling moves in orde...
International audienceThis paper addresses the problem of designing efficient sampling moves in orde...
In this paper, we propose a hierarchical Bayesian model approximating the ℓ20 mixed-norm regularizat...
This paper deals with EEG source localization. The aim is to perform spatially coherent focal locali...
International audienceThis paper deals with EEG source localization. The aim is to perform spatially...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
<div><p>The partially collapsed Gibbs (PCG) sampler offers a new strategy for improving the converge...
The Partially Collapsed Gibbs (PCG) sampler offers a new strategy for improving the con-vergence of ...
The partially collapsed Gibbs (PCG) sampler offers a new strategy for improving the convergence of a...
We consider Markov chain Monte Carlo algorithms which combine Gibbs updates with Metropolis-Hastings...
this article we investigate the relationship between the two popular algorithms, the EM algorithm an...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
Markov chain Monte Carlo (MCMC) methods form a rich class of computational techniques that help its ...