This thesis deals with stochastic programming problems with probabilistic constraits with discrete distribution. Finitness and corectness of algortithm for finding p-level efficient points is proved and I implement this algorithm in R. I relax the feasible set to get convex problem and I study properties of the relaxed set. Results for linear, integer and nonlinear problems are presented. In en example I compare discrete approach with the continuous one
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We propose an alternative apporach to stochastic programming based on Monte-Carlo sampling and stoch...
This thesis deals with stochastic programming problems with probabilistic constraits with discrete d...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving random variable...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
We consider nonlinear stochastic programming problems with probabilistic constraints. The concept of...
This thesis deals with chance constrained stochastic programming pro- blems. The first chapter is an...
We consider nonlinear stochastic programming problems with probabilistic constraints. The concept of...
This thesis deals with chance constrained stochastic programming pro- blems. The first chapter is an...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider two types of probabilistic constrained stochastic linear programming problems and one pr...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We propose an alternative apporach to stochastic programming based on Monte-Carlo sampling and stoch...
This thesis deals with stochastic programming problems with probabilistic constraits with discrete d...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving random variable...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
We consider nonlinear stochastic programming problems with probabilistic constraints. The concept of...
This thesis deals with chance constrained stochastic programming pro- blems. The first chapter is an...
We consider nonlinear stochastic programming problems with probabilistic constraints. The concept of...
This thesis deals with chance constrained stochastic programming pro- blems. The first chapter is an...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider two types of probabilistic constrained stochastic linear programming problems and one pr...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We propose an alternative apporach to stochastic programming based on Monte-Carlo sampling and stoch...