This paper solves the multiobjective stochastic linear program with partially known probability. We address the case where the probability distribution is defined by crisp inequalities. We propose a chance constrained approach and a compromise programming approach to transform the multiobjective stochastic linear program with linear partial information on probability distribution into its equivalent uniobjective problem. The resulting program is then solved using the modified L-shaped method. We illustrate our results by an example.Multiobjective stochastic programming Compromise programming Chance constrained approach Modified L-shaped method
We consider two types of probabilistic constrained stochastic linear programming problems and one pr...
Motivated by problems coming from planning and operational management in power generation companies,...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
This study focuses on solving multiobjective stochastic linear programming (MSLP) problems with part...
We consider a scalar stochastic linear optimization problem subject to linear constraints. We introd...
Abstract: Linear optimization problems are investigated whose parameters are uncertain. We apply coh...
International audienceWe develop an approach which enables the decision maker to search for a compro...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
To model decision problems involving uncertainty and probability, we propose stochastic constraint p...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
We consider two types of probabilistic constrained stochastic linear programming problems and one pr...
Motivated by problems coming from planning and operational management in power generation companies,...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
This study focuses on solving multiobjective stochastic linear programming (MSLP) problems with part...
We consider a scalar stochastic linear optimization problem subject to linear constraints. We introd...
Abstract: Linear optimization problems are investigated whose parameters are uncertain. We apply coh...
International audienceWe develop an approach which enables the decision maker to search for a compro...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
To model decision problems involving uncertainty and probability, we propose stochastic constraint p...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
We consider two types of probabilistic constrained stochastic linear programming problems and one pr...
Motivated by problems coming from planning and operational management in power generation companies,...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...