Chance constrained optimization is a natural and widely used approaches to provide profitable and reliable decisions under uncertainty. And the topics around the theory and applications of chance constrained problems are interesting and attractive. However, there are still some important issues requiring non-trivial efforts to solve. In view of this, we will systematically investigate chance constrained problems from the following perspectives. As the basis for chance constrained problems, we first review some main research results about chance constraints in three perspectives: convexity of chance constraints, reformulations and approximations for chance constraints and distributionally robust chance constraints. For stochastic geometric p...
We consider a chance constrained problem, where one seeks to minimize a convex objective over soluti...
Perturbations of convex chance constrained stochastic programs are considered the underlying probabi...
Various applications in reliability and risk management give rise to optimization problems with cons...
Chance constrained optimization is a natural and widely used approaches to provide profitable and re...
L'incertitude est une propriété naturelle des systèmes complexes. Les paramètres de certains modèles...
Chance-constrained optimization is a powerful mathematical framework that addresses decision-making ...
A chance constrained stochastic programming (CCSP) problem involves constraints with random paramete...
In this talk, we discuss distributionally robust geometric programs with individual and joint chance...
In this paper we study ambiguous chance constrained problems where the distributions of the random p...
summary:We explore reformulation of nonlinear stochastic programs with several joint chance constrai...
We explore reformulation of nonlinear stochastic programs with several joint chance constraints by s...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
Chance constraints represent a popular tool for finding decisions that enforce a robust satisfaction...
We consider a chance constrained problem, where one seeks to minimize a convex objective over soluti...
Perturbations of convex chance constrained stochastic programs are considered the underlying probabi...
Various applications in reliability and risk management give rise to optimization problems with cons...
Chance constrained optimization is a natural and widely used approaches to provide profitable and re...
L'incertitude est une propriété naturelle des systèmes complexes. Les paramètres de certains modèles...
Chance-constrained optimization is a powerful mathematical framework that addresses decision-making ...
A chance constrained stochastic programming (CCSP) problem involves constraints with random paramete...
In this talk, we discuss distributionally robust geometric programs with individual and joint chance...
In this paper we study ambiguous chance constrained problems where the distributions of the random p...
summary:We explore reformulation of nonlinear stochastic programs with several joint chance constrai...
We explore reformulation of nonlinear stochastic programs with several joint chance constraints by s...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
Chance constraints represent a popular tool for finding decisions that enforce a robust satisfaction...
We consider a chance constrained problem, where one seeks to minimize a convex objective over soluti...
Perturbations of convex chance constrained stochastic programs are considered the underlying probabi...
Various applications in reliability and risk management give rise to optimization problems with cons...