We study the integration of functions with respect to an unknown density. Information is available as oracle calls to the integrand and to the non-normalized density function. We are interested in analyzing the integration error of optimal algorithms (or the complexity of the problem) with emphasis on the variability of the weight function. For a corresponding large class of problem instances we show that the complexity grows linearly in the variability, and the simple Monte Carlo method provides an almost optimal algorithm. Under additional geometric restrictions (mainly log-concavity) for the density functions, we establish that a suitable adaptive local Metropolis algorithm is almost optimal and outperforms any non-adaptive algorithm
The Monte Carlo within Metropolis (MCwM) algorithm, interpreted as a perturbed Metropolis-Hastings (...
In this report, our goal is to find a way to get some information such as the mean out of high dimen...
This dissertation examines the complexity of a class of adaptive Monte Carlo algorithms used to solv...
We study the integration of functions with respect to an unknown density. Information is available a...
AbstractWe study the integration of functions with respect to an unknown density. Information is ava...
We study the integration of functions with respect to an unknown density. Information is available a...
Approximate Monte Carlo algorithms are not uncommon these days, their applicability is related to th...
AbstractThe stability and ergodicity properties of two adaptive random walk Metropolis algorithms ar...
AbstractThe Metropolis algorithm is a widely used procedure for sampling from a specified distributi...
This thesis is concerned with Monte Carlo methods for intractable and doubly intractable density est...
The subject of this thesis is the analysis of Markov Chain Monte Carlo (MCMC) methods and the develo...
A proper choice of a proposal distribution for MCMC methods, e.g. for the Metropolis-Hastings algori...
Recent optimal scaling theory has produced a condition for the asymptotically optimal acceptance rat...
Monte Carlo (MC) algorithm aims to generate samples from a given probability distribution P (X) with...
The subject of this thesis is the analysis of Markov Chain Monte Carlo(MCMC) methods and the develop...
The Monte Carlo within Metropolis (MCwM) algorithm, interpreted as a perturbed Metropolis-Hastings (...
In this report, our goal is to find a way to get some information such as the mean out of high dimen...
This dissertation examines the complexity of a class of adaptive Monte Carlo algorithms used to solv...
We study the integration of functions with respect to an unknown density. Information is available a...
AbstractWe study the integration of functions with respect to an unknown density. Information is ava...
We study the integration of functions with respect to an unknown density. Information is available a...
Approximate Monte Carlo algorithms are not uncommon these days, their applicability is related to th...
AbstractThe stability and ergodicity properties of two adaptive random walk Metropolis algorithms ar...
AbstractThe Metropolis algorithm is a widely used procedure for sampling from a specified distributi...
This thesis is concerned with Monte Carlo methods for intractable and doubly intractable density est...
The subject of this thesis is the analysis of Markov Chain Monte Carlo (MCMC) methods and the develo...
A proper choice of a proposal distribution for MCMC methods, e.g. for the Metropolis-Hastings algori...
Recent optimal scaling theory has produced a condition for the asymptotically optimal acceptance rat...
Monte Carlo (MC) algorithm aims to generate samples from a given probability distribution P (X) with...
The subject of this thesis is the analysis of Markov Chain Monte Carlo(MCMC) methods and the develop...
The Monte Carlo within Metropolis (MCwM) algorithm, interpreted as a perturbed Metropolis-Hastings (...
In this report, our goal is to find a way to get some information such as the mean out of high dimen...
This dissertation examines the complexity of a class of adaptive Monte Carlo algorithms used to solv...