Importance Sampling methods are broadly used to approximate posterior distributions or some of their moments. In its standard approach, samples are drawn from a single proposal distribution and weighted properly. However, since the performance depends on the mismatch between the targeted and the proposal distributions, several proposal densities are often employed for the generation of samples. Under this Multiple Importance Sampling (MIS) scenario, many works have addressed the selection or adaptation of the proposal distributions, interpreting the sampling and the weighting steps in different ways. In this paper, we establish a general framework for sampling and weighting procedures when more than one proposal is available. The most relev...
Multiple Importance Sampling (MIS) combines the probability density functions (pdf) of several sampl...
Multiple Importance Sampling (MIS) is a key technique for achieving robustness of Monte Carlo estima...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
In this paper, we introduce multiple importance sampling (MIS) approaches with overlapping (i.e., no...
For importance sampling (IS), multiple proposals can be combined to address different aspects of a t...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Adaptive importance sampling is a class of techniques for finding good proposal distributions for im...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
In the present work we study the important sampling method. This method serves as a variance reducti...
The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simulat...
Abstract We revisit the multiple importance sampling (MIS) estimator and investigate the bound on th...
Multiple Importance Sampling (MIS) combines the probability density functions (pdf) of several sampl...
Multiple Importance Sampling (MIS) is a key technique for achieving robustness of Monte Carlo estima...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
In this paper, we introduce multiple importance sampling (MIS) approaches with overlapping (i.e., no...
For importance sampling (IS), multiple proposals can be combined to address different aspects of a t...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
Adaptive importance sampling is a class of techniques for finding good proposal distributions for im...
International audienceMonte Carlo methods rely on random sampling to compute and approximate expecta...
In general, the naive importance sampling (IS) estimator does not work well in examples involving si...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
The importance sampling (IS) method lies at the core of many Monte Carlo-based techniques. IS allows...
In the present work we study the important sampling method. This method serves as a variance reducti...
The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simulat...
Abstract We revisit the multiple importance sampling (MIS) estimator and investigate the bound on th...
Multiple Importance Sampling (MIS) combines the probability density functions (pdf) of several sampl...
Multiple Importance Sampling (MIS) is a key technique for achieving robustness of Monte Carlo estima...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...