summary:We explore reformulation of nonlinear stochastic programs with several joint chance constraints by stochastic programs with suitably chosen penalty-type objectives. We show that the two problems are asymptotically equivalent. Simpler cases with one chance constraint and particular penalty functions were studied in [6,11]. The obtained problems with penalties and with a fixed set of feasible solutions are simpler to solve and analyze then the chance constrained programs. We discuss solving both problems using Monte-Carlo simulation techniques for the cases when the set of feasible solution is finite or infinite bounded. The approach is applied to a financial optimization problem with Value at Risk constraint, transaction costs and in...
In this paper, we present a new scheme of a sampling-based method to solve chance constrained progra...
We solve the chance constrained optimization with convexfeasible set through approximating the chanc...
Title: Nonconvex stochastic programming problems - formulations, sample approximations and stability...
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...
Various applications in reliability and risk management give rise to optimization problems with cons...
Chance constrained problems: penalty reformulation and performance of sample approximation techniqu
In this paper we investigate stochastic programms with joint chance constraints. We consider discret...
In this paper we investigate stochastic programms with joint chance constraints. We consider discret...
We solve the chance constrained optimization with convex feasible set through approximating the chan...
We focus on optimization models involving individual chance constraints, in which only the right-han...
In this paper, we describe an effective algorithm for handling chance constrained optimization probl...
International audienceIn this talk, we present a new scheme of a sampling method to solve chance-con...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
Chance constrained optimization is a natural and widely used approaches to provide profitable and re...
In this paper, we present a new scheme of a sampling-based method to solve chance constrained progra...
We solve the chance constrained optimization with convexfeasible set through approximating the chanc...
Title: Nonconvex stochastic programming problems - formulations, sample approximations and stability...
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...
Various applications in reliability and risk management give rise to optimization problems with cons...
Chance constrained problems: penalty reformulation and performance of sample approximation techniqu
In this paper we investigate stochastic programms with joint chance constraints. We consider discret...
In this paper we investigate stochastic programms with joint chance constraints. We consider discret...
We solve the chance constrained optimization with convex feasible set through approximating the chan...
We focus on optimization models involving individual chance constraints, in which only the right-han...
In this paper, we describe an effective algorithm for handling chance constrained optimization probl...
International audienceIn this talk, we present a new scheme of a sampling method to solve chance-con...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
Chance constrained optimization is a natural and widely used approaches to provide profitable and re...
In this paper, we present a new scheme of a sampling-based method to solve chance constrained progra...
We solve the chance constrained optimization with convexfeasible set through approximating the chanc...
Title: Nonconvex stochastic programming problems - formulations, sample approximations and stability...