Stochastic Programming (SP) has long been considered as a well-justified yet computationally challenging paradigm for practical applications. Computational studies in the literature often involve approximating a large number of scenarios by using a small number of scenarios to be processed via deterministic solvers, or running Sample Average Approximation on some genre of high performance machines so that statistically acceptable bounds can be obtained. In this paper we show that for a class of stochastic linear programming problems, an alternative approach known as Stochastic Decomposition (SD) can provide solutions of similar quality, in far less computational time using ordinary desktop or laptop machines of today. In addition to these c...
In stochastic programming, the consideration of uncertainty might lead to large scale prob-lems. In ...
This paper solves the multiobjective stochastic linear program with partially known probability. We ...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
2016-06-16Stochastic Programming (SP) has long been considered as a well-justified yet computational...
Stochastic linear programming problems are linear programming problems for which one or more data el...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
Stochastic linear programs are linear programs in which some of the problem data are random variable...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Sampling and decomposition constitute two of the most successful approaches for addressing large-sca...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
In stochastic programming, the consideration of uncertainty might lead to large scale prob-lems. In ...
This paper solves the multiobjective stochastic linear program with partially known probability. We ...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
2016-06-16Stochastic Programming (SP) has long been considered as a well-justified yet computational...
Stochastic linear programming problems are linear programming problems for which one or more data el...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
Stochastic linear programs are linear programs in which some of the problem data are random variable...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Sampling and decomposition constitute two of the most successful approaches for addressing large-sca...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
In stochastic programming, the consideration of uncertainty might lead to large scale prob-lems. In ...
This paper solves the multiobjective stochastic linear program with partially known probability. We ...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...