Dynamic stochastic optimization problems with a large (possibly infinite) number of decision stages and high-dimensional state vectors are inherently difficult to solve. In fact, scenario tree-based algorithms are unsuitable for problems with many stages, while dynamic programming-type techniques are unsuitable for problems with many state variables. This paper proposes a stage aggregation scheme for stochastic optimization problems in continuous time, thus having an extremely large (i.e., uncountable) number of decision stages. By perturbing the underlying data and information processes, we construct two approximate problems that provide bounds on the optimal value of the original problem. Moreover, we prove that the gap between the bounds...
Scenarios are indispensable ingredients for the numerical solution of stochastic optimization proble...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Approximation techniques are challenging, important and very often irreplaceable solution methods fo...
In this paper, we propose a successive approximation heuristic which solves large stochastic mixed-i...
We consider sequences-indexed by time (discrete stages)-of families of multistage stochastic optimiz...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
Scenarios are indispensable ingredients for the numerical solution of stochastic optimization proble...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Approximation techniques are challenging, important and very often irreplaceable solution methods fo...
In this paper, we propose a successive approximation heuristic which solves large stochastic mixed-i...
We consider sequences-indexed by time (discrete stages)-of families of multistage stochastic optimiz...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
Scenarios are indispensable ingredients for the numerical solution of stochastic optimization proble...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...