This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sam-ple approximations of stochastic programs. In high dimensional numerical integration, RQMC methods often substantially reduce the variance of sample approximations compared to MC. It seems thus natural to use RQMC methods in sample approximations of stochastic programs. It is shown, that RQMC methods produce epi-convergent approximations of the original problem. RQMC and MC methods are compared numerically in five different portfolio management mod-els. In the tests, RQMC methods outperform MC sampling substantially reducing the sample variance and bias of optimal values in all the considered problems
Monte Carlo variance reduction methods have attracted significant interest due to the continuous dem...
The standard Monte Carlo approach to evaluating multi-dimensional integrals using (pseudo)-random in...
Abstract. In this paper, we consider a class of stochastic mathematical programs with equilibrium co...
This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sample approximations o...
International audienceWe survey basic ideas and results on randomized quasi-Monte Carlo (RQMC) metho...
Several variance reduction techniques including importance sampling, (mar-tingale) control variate, ...
Quasi-Monte Carlo algorithms are studied for designing discrete approximations of two-stage linear s...
AbstractQuasi-Monte Carlo methods can be described as deterministic versions of Monte Carlo methods....
Suppose an investor wishes to select assets so as to maximize expected utility of end-of-period weal...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
Abstract. Quasi-Monte Carlo methods are based on the idea that ran-dom Monte Carlo techniques can of...
We use randomized quasi-Monte Carlo (RQMC) techniques to construct computational tools for working w...
The aim of my research was to develop new and powerful mathematical tools for computationally challe...
The aim of my research was to develop new and powerful mathematical tools for computationally challe...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
Monte Carlo variance reduction methods have attracted significant interest due to the continuous dem...
The standard Monte Carlo approach to evaluating multi-dimensional integrals using (pseudo)-random in...
Abstract. In this paper, we consider a class of stochastic mathematical programs with equilibrium co...
This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sample approximations o...
International audienceWe survey basic ideas and results on randomized quasi-Monte Carlo (RQMC) metho...
Several variance reduction techniques including importance sampling, (mar-tingale) control variate, ...
Quasi-Monte Carlo algorithms are studied for designing discrete approximations of two-stage linear s...
AbstractQuasi-Monte Carlo methods can be described as deterministic versions of Monte Carlo methods....
Suppose an investor wishes to select assets so as to maximize expected utility of end-of-period weal...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
Abstract. Quasi-Monte Carlo methods are based on the idea that ran-dom Monte Carlo techniques can of...
We use randomized quasi-Monte Carlo (RQMC) techniques to construct computational tools for working w...
The aim of my research was to develop new and powerful mathematical tools for computationally challe...
The aim of my research was to develop new and powerful mathematical tools for computationally challe...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
Monte Carlo variance reduction methods have attracted significant interest due to the continuous dem...
The standard Monte Carlo approach to evaluating multi-dimensional integrals using (pseudo)-random in...
Abstract. In this paper, we consider a class of stochastic mathematical programs with equilibrium co...