Computing the marginal likelihood (ML) of a model requires marginalizing out all of the parameters and latent variables, a difficult high-dimensional summation or integration problem. To make matters worse, it is often hard to measure the accuracy of one's ML estimates. We present bidirectional Monte Carlo, a technique for obtaining accurate log-ML estimates on data simulated from a model. This method obtains stochastic lower bounds on the log-ML using annealed importance sampling or sequential Monte Carlo, and obtains stochastic upper bounds by running these same algorithms in reverse starting from an exact posterior sample. The true value can be sandwiched between these two stochastic bounds with high probability. Using the ground truth l...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
92 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.The Markov chain marginal boot...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Scoring structures of undirected graphical models by means of evaluating the marginal likelihood is ...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
The marginal likelihood, or model evidence, is a key quantity in Bayesian parameter estimation and m...
The marginal likelihood can be notoriously difficult to compute, and particularly so in high-dimensi...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
A centred Gaussian model that is Markov with respect to an undirected graph G is characterised by th...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
International audienceStochastic approximation methods play a central role in maximum likelihood est...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
<p>(a) full data posterior density and 10 subposterior densities for the 10 data subsets; (b)-(f): f...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
92 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.The Markov chain marginal boot...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Scoring structures of undirected graphical models by means of evaluating the marginal likelihood is ...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
The marginal likelihood, or model evidence, is a key quantity in Bayesian parameter estimation and m...
The marginal likelihood can be notoriously difficult to compute, and particularly so in high-dimensi...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
A centred Gaussian model that is Markov with respect to an undirected graph G is characterised by th...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
International audienceStochastic approximation methods play a central role in maximum likelihood est...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
<p>(a) full data posterior density and 10 subposterior densities for the 10 data subsets; (b)-(f): f...
This article provides a framework for estimating the marginal likelihood for the purpose of Bayesian...
92 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.The Markov chain marginal boot...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...