: Perfect simulation algorithms based on Propp and Wilson (1996) have so far been of limited use for sampling problems of interest in statistics. We specify a new family of perfect sampling algorithms obtained by combining MCMC tempering algorithms with dominated coupling from the past, and demonstrate that our algorithms will be useful for sample based inference. Perfect tempering algorithms are less efficient than the MCMC algorithms on which they typically depend. However, samples returned by perfect tempering are distributed according to the intended distribution, so that these new sampling algorithms do not suffer from the convergence problems of MCMC. Perfect tempering is related to rejection sampling. When rejection sampling has been...
We provide an exact simulation algorithm that produces variables from truncated Gaussian distributio...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
In 1996, Propp and Wilson introduced Coupling from the Past (CFTP), an algorithm for generating a sa...
Perfect Monte Carlo sampling refers to sampling random realizations exactly from the target distribu...
In 1996, Propp and Wilson introduced coupling from the past (CFTP), an algorithm for generating a sa...
By developing and applying a broad framework for rejection sampling using auxiliary randomness, we p...
Markov Chain Monte Carlo (MCMC) methods are used to sample from complicated multivariate distributio...
The paper is concerned with the exact simulation of an unobserved true point process conditional on ...
Multimodal structures in the probability density can be a serious problem for traditional Markov Cha...
Abstract. Multimodal structures in the sampling density (e.g. two competing phases) can be a serious...
algorithm for generating a sample from the exact stationary distribution of a Markov chain. In 1998,...
Recently Propp and Wilson [14] have proposed an algorithm, called coupling from the past (CFTP), whi...
Markov Chain Monte Carlo method is used to sample from complicated multivariate distribution with no...
In this work we investigate the use of perfect sampling methods within the context of Bayesian linea...
We provide an exact simulation algorithm that produces variables from truncated Gaussian distributio...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
In 1996, Propp and Wilson introduced Coupling from the Past (CFTP), an algorithm for generating a sa...
Perfect Monte Carlo sampling refers to sampling random realizations exactly from the target distribu...
In 1996, Propp and Wilson introduced coupling from the past (CFTP), an algorithm for generating a sa...
By developing and applying a broad framework for rejection sampling using auxiliary randomness, we p...
Markov Chain Monte Carlo (MCMC) methods are used to sample from complicated multivariate distributio...
The paper is concerned with the exact simulation of an unobserved true point process conditional on ...
Multimodal structures in the probability density can be a serious problem for traditional Markov Cha...
Abstract. Multimodal structures in the sampling density (e.g. two competing phases) can be a serious...
algorithm for generating a sample from the exact stationary distribution of a Markov chain. In 1998,...
Recently Propp and Wilson [14] have proposed an algorithm, called coupling from the past (CFTP), whi...
Markov Chain Monte Carlo method is used to sample from complicated multivariate distribution with no...
In this work we investigate the use of perfect sampling methods within the context of Bayesian linea...
We provide an exact simulation algorithm that produces variables from truncated Gaussian distributio...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...