It is often necessary to make sampling-based statistical inference about many probability distributions in parallel. Given a finite computational resource, this article addresses how to optimally divide sampling effort between the samplers of the different distributions. Formally approaching this decision problem requires both the specification of an error criterion to assess how well each group of samples represent their underlying distribution, and a loss function to combine the errors into an overall performance score. For the first part, a new Monte Carlo divergence error criterion based on Jensen–Shannon divergence is proposed. Using results from information theory, approximations are derived for estimating this criterion for each targ...
We introduce a general form of sequential Monte Carlo algorithm defined in terms of a pa-rameterized...
Generalisation error estimation is an important issue in machine learning. Cross-validation traditio...
AbstractMarkov chain Monte Carlo (MCMC) simulation methods are being used increasingly in statistica...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
A critical issue for users of Markov Chain Monte Carlo (MCMC) methods in applications is how to dete...
Accurate Monte Carlo confidence intervals (CIs), which are formed with an estimated mean and an esti...
Recent work has focused on the problem of nonparametric estimation of information divergence functio...
In the design of efficient simulation algorithms, one is often beset with a poor choice of proposal ...
We propose a new method to approximately integrate a function with respect to a given probability di...
Computing the partition function of a graphical model is a fundamental task in probabilistic inferen...
To address the unknown nature of probability-sampling models, in this paper we use information theor...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In the design of ecient simulation algorithms, one is often beset with a poorchoice of proposal dist...
Multiple hypothesis tests are often carried out in practice using p-value estimates obtained with bo...
We consider the problem of sequentially choosing between a set of unbiased Monte Carlo estimators to...
We introduce a general form of sequential Monte Carlo algorithm defined in terms of a pa-rameterized...
Generalisation error estimation is an important issue in machine learning. Cross-validation traditio...
AbstractMarkov chain Monte Carlo (MCMC) simulation methods are being used increasingly in statistica...
Monte Carlo analysis has become nearly ubiquitous since its introduction, now over 65 years ago. It ...
A critical issue for users of Markov Chain Monte Carlo (MCMC) methods in applications is how to dete...
Accurate Monte Carlo confidence intervals (CIs), which are formed with an estimated mean and an esti...
Recent work has focused on the problem of nonparametric estimation of information divergence functio...
In the design of efficient simulation algorithms, one is often beset with a poor choice of proposal ...
We propose a new method to approximately integrate a function with respect to a given probability di...
Computing the partition function of a graphical model is a fundamental task in probabilistic inferen...
To address the unknown nature of probability-sampling models, in this paper we use information theor...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In the design of ecient simulation algorithms, one is often beset with a poorchoice of proposal dist...
Multiple hypothesis tests are often carried out in practice using p-value estimates obtained with bo...
We consider the problem of sequentially choosing between a set of unbiased Monte Carlo estimators to...
We introduce a general form of sequential Monte Carlo algorithm defined in terms of a pa-rameterized...
Generalisation error estimation is an important issue in machine learning. Cross-validation traditio...
AbstractMarkov chain Monte Carlo (MCMC) simulation methods are being used increasingly in statistica...