Stochastic programming is a well-known instrument to model many risk management problems in finance.In this paper we consider a stochastic programming modelwhere the objective function is the variance of a random function and the constraint function is the expected value of the random function. Instead of using popular scenario tree methods, we apply the well-known sample average approximation (SAA) method to solve it. An advantage of SAA is that it can be implemented without knowing the distribution of the random data.We investigate the asymptotic properties of statistical estimators obtained from the SAA problem including examining the rate of convergence of optimal solutions of the SAA problem as sample size increases.By using the classi...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pro...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
Sample average approximation (SAA) is a well-known solution methodology for traditional stochastic p...
We consider in this paper stochastic programming problems which can be formulated as an optimization...
We consider in this paper stochastic programming problems which can be formulated as an optimization...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
Abstract. Various stochastic programming problems can be formulated as problems of optimization of a...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
We propose a sample average approximation (SAA) method for stochastic program-ming problems involvin...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pro...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
Sample average approximation (SAA) is a well-known solution methodology for traditional stochastic p...
We consider in this paper stochastic programming problems which can be formulated as an optimization...
We consider in this paper stochastic programming problems which can be formulated as an optimization...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
Abstract. Various stochastic programming problems can be formulated as problems of optimization of a...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
We propose a sample average approximation (SAA) method for stochastic program-ming problems involvin...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pro...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...