AbstractThis paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional problems. Here we concentrate on the case where the components in the target density is a spatially homogeneous Gibbs distribution with finite range. The performance of the algorithm is strongly linked to the presence or absence of phase transition for the Gibbs distribution; the convergence time being approximately linear in dimension for problems where phase transition is not present. Related to this, there is an optimal way to scale the variance of the proposal distribution in order to maximise the speed of convergence of the algorithm. This turns out to involve scaling the variance of the proposal as the reciprocal of dimension (at ...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...
The Random Walk Metropolis (RWM) algorithm is a Metropolis–Hastings Markov Chain Monte Carlo algorit...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
We consider the optimal scaling problem for high-dimensional random walk Metropolis (RWM) algorithms...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
AbstractRecent optimal scaling theory has produced a condition for the asymptotically optimal accept...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...
The Random Walk Metropolis (RWM) algorithm is a Metropolis–Hastings Markov Chain Monte Carlo algorit...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
This paper investigates the behaviour of the random walk Metropolis algorithm in high-dimensional pr...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
We consider the optimal scaling problem for high-dimensional random walk Metropolis (RWM) algorithms...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
We consider the optimal scaling problem for high-dimensional Random walk Metropolis (RWM) algorithms...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
International audienceThis paper considers the optimal scaling problem for high-dimensional random w...
AbstractRecent optimal scaling theory has produced a condition for the asymptotically optimal accept...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...
The Random Walk Metropolis (RWM) algorithm is a Metropolis–Hastings Markov Chain Monte Carlo algorit...
Diffusion limits of MCMC methods in high dimensions provide a useful theoretical tool for studying c...