Since the pioneering work by Dentcheva and Ruszczy?ski [Optimization with stochastic dominance constraints, SIAM J. Optim. 14 (2003), pp. 548–566], stochastic programs with second-order dominance constraints (SPSODC) have received extensive discussions over the past decade from theory of optimality to numerical schemes and practical applications. In this paper, we investigate discrete approximation of SPSODC when (a) the true probability is known but continuously distributed and (b) the true probability distribution is unknown but it lies within an ambiguity set of distributions. Differing from the well-known Monte Carlo discretization method, we propose a deterministic discrete approximation scheme due to Pflug and Pichler [Approximations ...
In this paper, we study distributionally robust optimization approaches for a one-stage stochastic m...
Convergence analysis for optimization problems with chance constraints concerns impact of variation ...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Discrete approximation of probability distributions is an important topic in stochastic programming....
In this paper we present a stability analysis of a stochastic optimization problem with stochastic s...
In this paper we present stability and sensitivity analysis of a stochastic optimization problem wit...
In this paper we study optimization problems with second-order stochastic dominance con-straints. Th...
Stochastic dominance relations are well-studied in statistics, decision theory and economics. Re-cen...
Stochastic dominance relations are well-studied in statistics, decision theory and economics. Recent...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
This paper considers distributionally robust formulations of a two stage stochastic programmingprobl...
This paper presents numerical approximation schemes for a two stage stochastic programming problem w...
We introduce stochastic integer programs with dominance constraints induced by mixed-integer lin-ear...
Motivated by problems coming from planning and operational management in power generation companies,...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
In this paper, we study distributionally robust optimization approaches for a one-stage stochastic m...
Convergence analysis for optimization problems with chance constraints concerns impact of variation ...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Discrete approximation of probability distributions is an important topic in stochastic programming....
In this paper we present a stability analysis of a stochastic optimization problem with stochastic s...
In this paper we present stability and sensitivity analysis of a stochastic optimization problem wit...
In this paper we study optimization problems with second-order stochastic dominance con-straints. Th...
Stochastic dominance relations are well-studied in statistics, decision theory and economics. Re-cen...
Stochastic dominance relations are well-studied in statistics, decision theory and economics. Recent...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
This paper considers distributionally robust formulations of a two stage stochastic programmingprobl...
This paper presents numerical approximation schemes for a two stage stochastic programming problem w...
We introduce stochastic integer programs with dominance constraints induced by mixed-integer lin-ear...
Motivated by problems coming from planning and operational management in power generation companies,...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
In this paper, we study distributionally robust optimization approaches for a one-stage stochastic m...
Convergence analysis for optimization problems with chance constraints concerns impact of variation ...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...