The sample average approximation (SAA) method is an approach for solving stochastic optimization problems by using Monte Carlo simulation. In this technique the expected objective function of the stochastic problem is approximated by a sample average estimate derived from a random sample. The resulting sample average approximating problem is then solved by deterministic optimization techniques. The process is repeated with different samples to obtain candidate solutions along with statistical estimates of their optimality gaps. We present a detailed computational study of the application of the SAA method to solve three classes of stochastic routing problems. These stochastic problems involve an extremely large number scenarios and first-st...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pro...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pr...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
http://www.optimization-online.org/DB_HTML/2007/09/1787.htmlIn this paper we consider optimization p...
Abstract. Various stochastic programming problems can be formulated as problems of optimization of a...
International audienceIn this paper we consider optimization problems where the objective function i...
Sample Average Approximation (SAA) is a well-known method for solving stochastic programs. Here, we ...
Abstract. In this paper we study a Monte Carlo simulation–based approach to stochastic discrete opti...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
International audienceA basic difficulty with solving stochastic programming problems is that it req...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pro...
The sample average approximation (SAA) method is an approach for solving stochastic optimization pr...
Title: Sample approximation technique in stochastic programming Author: Eszter V¨or¨os Department: D...
This thesis provides an overview of stochastic optimization (SP) problems and looks at how the Sampl...
http://www.optimization-online.org/DB_HTML/2007/09/1787.htmlIn this paper we consider optimization p...
Abstract. Various stochastic programming problems can be formulated as problems of optimization of a...
International audienceIn this paper we consider optimization problems where the objective function i...
Sample Average Approximation (SAA) is a well-known method for solving stochastic programs. Here, we ...
Abstract. In this paper we study a Monte Carlo simulation–based approach to stochastic discrete opti...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
International audienceA basic difficulty with solving stochastic programming problems is that it req...
In this paper we study a Monte Carlo simulation based approach to stochastic discrete optimization p...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Various stochastic programming problems can be formulated as problems of optimization of an expected...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...