We consider classes of stochastic linear programming problems which can be efficiently solved by deterministic algorithms. For two–stage recourse problems we identify two such classes. The first one consists of problems where the number of stochastically independent random variables is relatively low; the second class is the class of simple recourse problems. The proposed deterministic algorithm is successive discrete approximation. We also illustrate the impact of required accuracy on the efficiency of this algorithm. For jointly chance constrained problems with a random right–hand–side and multivariate normal distribution we demonstrate the increase in efficiency when lower accuracy is required, for a central cutting plane method. We supp...
AbstractStochastic approximation originally proposed by Robbins and Monro for stochastic problems is...
Accelerated probabilistic modeling algorithms, presenting stochastic local search (SLS) technique, a...
Many planning problems involve choosing a set of optimal decisions for a system in the face of uncer...
We consider classes of stochastic linear programming problems which can be efficiently solved by det...
Sampling and decomposition constitute two of the most successful approaches for addressing large-sca...
We consider general combinatorial optimization problems that can be formulated as minimizing the wei...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Formulation of stochastic optimisation problems and computational algorithms for their solution cont...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic linear programming problems are linear programming problems for which one or more data el...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
htmlabstractApproximation algorithms are the prevalent solution methods in the field of stochastic p...
textOptimal decision making under uncertainty involves modeling stochastic systems and developing s...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.In...
AbstractStochastic approximation originally proposed by Robbins and Monro for stochastic problems is...
Accelerated probabilistic modeling algorithms, presenting stochastic local search (SLS) technique, a...
Many planning problems involve choosing a set of optimal decisions for a system in the face of uncer...
We consider classes of stochastic linear programming problems which can be efficiently solved by det...
Sampling and decomposition constitute two of the most successful approaches for addressing large-sca...
We consider general combinatorial optimization problems that can be formulated as minimizing the wei...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Formulation of stochastic optimisation problems and computational algorithms for their solution cont...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic linear programming problems are linear programming problems for which one or more data el...
Stochastic Programming (SP) has long been considered as a well-justified yet computationally challen...
htmlabstractApproximation algorithms are the prevalent solution methods in the field of stochastic p...
textOptimal decision making under uncertainty involves modeling stochastic systems and developing s...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.In...
AbstractStochastic approximation originally proposed by Robbins and Monro for stochastic problems is...
Accelerated probabilistic modeling algorithms, presenting stochastic local search (SLS) technique, a...
Many planning problems involve choosing a set of optimal decisions for a system in the face of uncer...