Models for which the likelihood function can be evaluated only up to a parameter-dependent unknown normalizing constant, such as Markov random field models, are used widely in computer science, statistical physics, spatial statistics, and network analysis. However, Bayesian analysis of these models using standard Monte Carlo methods is not possible due to the intractability of their likelihood functions. Several methods that permit exact, or close to exact, simulation from the posterior distribution have recently been developed. However, estimating the evidence and Bayes’ factors for these models remains challenging in general. This paper describes new random weight importance sampling and sequential Monte Carlo methods for estimating BFs t...
Generalised Bayesian inference updates prior beliefs using a loss function, rather than a likelihood...
When an unbiased estimator of the likelihood is used within a Metropolis–Hastings chain, it is neces...
We are living in the big data era, as current technologies and networks allow for the easy and routi...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
Statistical methods of inference typically require the likelihood function to be computable in a re...
Bayesian inference is an important branch in statistical sciences. The subject of this thesis is abo...
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
We present a framework for approximate Bayesian inference when only a limited number of noisy log-li...
Routine goodness-of-fit analyses of complex models with intractable likelihoods are hampered by a l...
<p>Models with intractable normalizing functions arise frequently in statistics. Common examples of ...
Accept-reject based Markov chain Monte Carlo algorithms have traditionally utilized acceptance proba...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
AbstractBayesian variable selection often assumes normality, but the effects of model misspecificati...
Generalised Bayesian inference updates prior beliefs using a loss function, rather than a likelihood...
When an unbiased estimator of the likelihood is used within a Metropolis–Hastings chain, it is neces...
We are living in the big data era, as current technologies and networks allow for the easy and routi...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
Statistical methods of inference typically require the likelihood function to be computable in a re...
Bayesian inference is an important branch in statistical sciences. The subject of this thesis is abo...
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
We present a framework for approximate Bayesian inference when only a limited number of noisy log-li...
Routine goodness-of-fit analyses of complex models with intractable likelihoods are hampered by a l...
<p>Models with intractable normalizing functions arise frequently in statistics. Common examples of ...
Accept-reject based Markov chain Monte Carlo algorithms have traditionally utilized acceptance proba...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
AbstractBayesian variable selection often assumes normality, but the effects of model misspecificati...
Generalised Bayesian inference updates prior beliefs using a loss function, rather than a likelihood...
When an unbiased estimator of the likelihood is used within a Metropolis–Hastings chain, it is neces...
We are living in the big data era, as current technologies and networks allow for the easy and routi...