We study the use of sparse grids methods for the scenario generation (or discretiza-tion) problem in stochastic programming problems where the uncertainty is modeled using a continuous multivariate distribution. We show that, under a regularity assumption on the random function, the sequence of optimal solutions of the sparse grid approximations, as the number of scenarios increases, converges to the true optimal solutions. The rate of con-vergence is also established. We consider the use of quadrature formulas tailored to the stochastic programs where the uncertainty can be described via a linear transformation of a product of univariate distributions, such as joint normal distributions. We numerically compare the performance of the sparse...
This work presents an empirical analysis of popular scenario generation methods for stochastic optim...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
This work proposes and analyzes a Smolyak-type sparse grid stochastic collocation method for the ap...
Stochastic optimisation problems minimise expectations of random cost functions. Thus they require a...
Stochastic programs can only be solved with discrete distributions of limited cardinality. Input, ho...
Most physical systems are inevitably affected by uncertainties due to natural variabili-ties or inco...
One central problem in solving stochastic programming problems is to generate moderate-sized scenari...
Stochastic programming concerns mathematical programming in the presence of uncertainty. In a stocha...
Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty...
We consider convex stochastic programs with an (approximate) initial probability distribution P havi...
This work proposes and analyzes a Smolyak-type sparse grid stochastic collocation method for the app...
Scenarios are indispensable ingredients for the numerical solution of stochastic optimization proble...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
This work presents an empirical analysis of popular scenario generation methods for stochastic optim...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
This work proposes and analyzes a Smolyak-type sparse grid stochastic collocation method for the ap...
Stochastic optimisation problems minimise expectations of random cost functions. Thus they require a...
Stochastic programs can only be solved with discrete distributions of limited cardinality. Input, ho...
Most physical systems are inevitably affected by uncertainties due to natural variabili-ties or inco...
One central problem in solving stochastic programming problems is to generate moderate-sized scenari...
Stochastic programming concerns mathematical programming in the presence of uncertainty. In a stocha...
Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty...
We consider convex stochastic programs with an (approximate) initial probability distribution P havi...
This work proposes and analyzes a Smolyak-type sparse grid stochastic collocation method for the app...
Scenarios are indispensable ingredients for the numerical solution of stochastic optimization proble...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
Scenario generation is the construction of a discrete random vector to represent parameters of uncer...
This work presents an empirical analysis of popular scenario generation methods for stochastic optim...
In recent years, stochastic programming has gained an increasing popularity within the mathematical ...
This work proposes and analyzes a Smolyak-type sparse grid stochastic collocation method for the ap...