Driven by several successful applications such as in stochastic gradient descent or in Bayesian computation, control variates have become a major tool for Monte Carlo integration. However, standard methods do not allow the distribution of the particles to evolve during the algorithm, as is the case in sequential simulation methods. Within the standard adaptive importance sampling framework, a simple weighted least squares approach is proposed to improve the procedure with control variates. The procedure takes the form of a quadrature rule with adapted quadrature weights to reflect the information brought in by the control variates. The quadrature points and weights do not depend on the integrand, a computational advantage in case of multipl...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...
We describe a simple Importance Sampling strategy for Monte Carlo simulations based on a least squar...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
Nowadays, Monte Carlo integration is a popular tool for estimating high-dimensional, complex integra...
We describe a simple Importance Sampling strategy for Monte Carlo simulations based on a least-squar...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
The use of control variates is a well-known variance reduction tech- nique in Monte Carlo integratio...
Adaptive Monte Carlo methods are very efficient techniques designed to tune simu-lation estimators o...
International audienceAdaptive Monte Carlo methods are recent variance reduction techniques. In this...
Adaptive Monte Carlo methods are simulation efficiency improvement techniques designed to adap-tivel...
International audienceAdaptive Monte Carlo methods are very efficient techniques designed to tune si...
. The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simul...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...
We describe a simple Importance Sampling strategy for Monte Carlo simulations based on a least squar...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
The standard Kernel Quadrature method for numerical integration with random point sets (also called ...
Nowadays, Monte Carlo integration is a popular tool for estimating high-dimensional, complex integra...
We describe a simple Importance Sampling strategy for Monte Carlo simulations based on a least-squar...
This thesis is concerned with Monte Carlo importance sampling as used for statistical multiple integ...
The complexity of integrands in modern scientific, industrial and financial problems increases rapid...
The use of control variates is a well-known variance reduction tech- nique in Monte Carlo integratio...
Adaptive Monte Carlo methods are very efficient techniques designed to tune simu-lation estimators o...
International audienceAdaptive Monte Carlo methods are recent variance reduction techniques. In this...
Adaptive Monte Carlo methods are simulation efficiency improvement techniques designed to adap-tivel...
International audienceAdaptive Monte Carlo methods are very efficient techniques designed to tune si...
. The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simul...
Computing marginal likelihoods to perform Bayesian model selection is a challenging task, particular...
Importance sampling is a well known variance reduction technique for Monte Carlo simulation. For qua...
We describe a simple Importance Sampling strategy for Monte Carlo simulations based on a least squar...