In this paper, we consider a class of stochastic mathematical programs with equilibrium constraints introduced by Birbil et al. (Math Oper Res 31:739–760, 2006). Firstly, by means of a Monte Carlo method, we obtain a nonsmooth discrete approximation of the original problem. Then, we propose a smoothing method together with a penalty technique to get a standard nonlinear programming problem. Some convergence results are established. Moreover, since quasi-Monte Carlo methods are generally faster than Monte Carlo methods, we discuss a quasi-Monte Carlo sampling approach as well. Furthermore, we give an example in economics to illustrate the model and show some numerical results with this exampl
We consider a class of stochastic mathematical programs with complementarity constraints, in which b...
textabstractWe consider a class of stochastic mathematical programs with complementarity constraints...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
Abstract. In this paper, we consider a class of stochastic mathematical programs with equilibrium co...
Abstract In this paper, we consider the stochastic mathematical programs with equilibrium constraint...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
In this article, we discuss the sample average approximation (SAA) method applied to a class of stoc...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Many control problems are so complex that analytic techniques fail to solve them [2]. Furthermore, e...
AbstractThis paper considers a stochastic mathematical program with hybrid equilibrium constraints (...
Quasi-Monte Carlo algorithms are studied for designing discrete approximationsof two-stage linear st...
We consider a class of stochastic mathematical programs with complementarity constraints, in which b...
textabstractWe consider a class of stochastic mathematical programs with complementarity constraints...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
Abstract. In this paper, we consider a class of stochastic mathematical programs with equilibrium co...
Abstract In this paper, we consider the stochastic mathematical programs with equilibrium constraint...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
In this article, we discuss the sample average approximation (SAA) method applied to a class of stoc...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Many control problems are so complex that analytic techniques fail to solve them [2]. Furthermore, e...
AbstractThis paper considers a stochastic mathematical program with hybrid equilibrium constraints (...
Quasi-Monte Carlo algorithms are studied for designing discrete approximationsof two-stage linear st...
We consider a class of stochastic mathematical programs with complementarity constraints, in which b...
textabstractWe consider a class of stochastic mathematical programs with complementarity constraints...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...