Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty in stochastic optimization problems. These methods depend upon the selection of a set of scenarios to represent the uncertain variables. Typically these scenarios are obtained by making random drawings from the underlying probability distribution. Here we examine alternative approaches in which the scenarios are targeted at the underlying problem. In particular, we explore the use of vector quantization methods for scenario generation. Vector quantization based scenarios are more computationally intensive to generate but offer advantages for certain classes of optimization problems. Several examples are presented to illustrate the ideas
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Randomized optimization is an established tool for control design with modulated robustness. While f...
Randomized optimization is an established tool for control design with modulated robustness. While f...
This paper describes a novel technique for scenario generation aimed at closed loop stochastic nonli...
Stochastic programming concerns mathematical programming in the presence of uncertainty. In a stocha...
We study the use of sparse grids methods for the scenario generation (or discretiza-tion) problem in...
In the field of data-driven optimization under uncertainty, scenario reduction is a commonly used t...
Abstract. A central issue arising in financial, engineering and, more generally, in many applicative...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
We investigate the connections between compression learning and scenario based optimization. We cons...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Stochastic programs can only be solved with discrete distributions of limited cardinality. Input, ho...
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...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Randomized optimization is an established tool for control design with modulated robustness. While f...
Randomized optimization is an established tool for control design with modulated robustness. While f...
This paper describes a novel technique for scenario generation aimed at closed loop stochastic nonli...
Stochastic programming concerns mathematical programming in the presence of uncertainty. In a stocha...
We study the use of sparse grids methods for the scenario generation (or discretiza-tion) problem in...
In the field of data-driven optimization under uncertainty, scenario reduction is a commonly used t...
Abstract. A central issue arising in financial, engineering and, more generally, in many applicative...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
We investigate the connections between compression learning and scenario based optimization. We cons...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Stochastic programs can only be solved with discrete distributions of limited cardinality. Input, ho...
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...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Randomized optimization is an established tool for control design with modulated robustness. While f...
Randomized optimization is an established tool for control design with modulated robustness. While f...