The pseudo-marginal algorithm is a variant of the Metropolis--Hastings algorithm which samples asymptotically from a probability distribution when it is only possible to estimate unbiasedly an unnormalized version of its density. Practically, one has to trade-off the computational resources used to obtain this estimator against the asymptotic variances of the ergodic averages obtained by the pseudo-marginal algorithm. Recent works optimizing this trade-off rely on some strong assumptions which can cast doubts over their practical relevance. In particular, they all assume that the distribution of the difference between the log-density and its estimate is independent of the parameter value at which it is evaluated. Under regularity conditions...
the likelihood function by drawing pseudo-samples from the model. We address both the rejec-tion sam...
We consider a pseudo-marginal Metropolis–Hastings kernel Pm that is constructed using an average of ...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
The pseudo-marginal algorithm is a variant of the Metropolis–Hastings algorithm which samples asympt...
We examine the behaviour of the pseudo-marginal random walk Metropolis algorithm, where evaluations ...
We consider a pseudo-marginal Metropolis--Hastings kernel Pm that is constructed using an average of...
This paper proposes a new sampling scheme based on Langevin dynamics that is applicable within pseud...
We examine the behaviour of the pseudo-marginal random walk Metropolis algorithm, where evaluations ...
The pseudomarginal algorithm is a Metropolis–Hastings‐type scheme which samples asymptotically from ...
The pseudomarginal algorithm is a Metropolis–Hastings‐type scheme which samples asymptotically from ...
We examine the optimal scaling and the efficiency of the pseudo-marginal random walk Metropolis algo...
We introduce a powerful and flexible MCMC algorithm for stochastic simulation. The method builds on ...
In this paper we examine the implications of the statistical large sample theory for the computation...
The pseudo-marginal Metropolis-Hastings approach is increasingly used for Bayesian inference in stat...
Pseudo-marginal Markov chain Monte Carlo methods for sampling from intractable distributions have ga...
the likelihood function by drawing pseudo-samples from the model. We address both the rejec-tion sam...
We consider a pseudo-marginal Metropolis–Hastings kernel Pm that is constructed using an average of ...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
The pseudo-marginal algorithm is a variant of the Metropolis–Hastings algorithm which samples asympt...
We examine the behaviour of the pseudo-marginal random walk Metropolis algorithm, where evaluations ...
We consider a pseudo-marginal Metropolis--Hastings kernel Pm that is constructed using an average of...
This paper proposes a new sampling scheme based on Langevin dynamics that is applicable within pseud...
We examine the behaviour of the pseudo-marginal random walk Metropolis algorithm, where evaluations ...
The pseudomarginal algorithm is a Metropolis–Hastings‐type scheme which samples asymptotically from ...
The pseudomarginal algorithm is a Metropolis–Hastings‐type scheme which samples asymptotically from ...
We examine the optimal scaling and the efficiency of the pseudo-marginal random walk Metropolis algo...
We introduce a powerful and flexible MCMC algorithm for stochastic simulation. The method builds on ...
In this paper we examine the implications of the statistical large sample theory for the computation...
The pseudo-marginal Metropolis-Hastings approach is increasingly used for Bayesian inference in stat...
Pseudo-marginal Markov chain Monte Carlo methods for sampling from intractable distributions have ga...
the likelihood function by drawing pseudo-samples from the model. We address both the rejec-tion sam...
We consider a pseudo-marginal Metropolis–Hastings kernel Pm that is constructed using an average of ...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...