Optimization problems arising in practice involve random parameters. For the computation of robust optimal solutions, i.e., optimal solutions being insensitive with respect to random parameter variations, deterministic substitute problems are needed. Based on the distribution of the random data, and using decision theoretical concepts, optimization problems under stochastic uncertainty are converted into deterministic substitute problems. Due to the occurring probabilities and expectations, approximative solution techniques must be applied. Deterministic and and stochastic approximation methods and their analytical properties are provided: Taylor expansion, regression and response surface methods, probability inequalities, First Order Reli...
This thesis concentrates on different approaches of solving decision making problems with an aspect ...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Optimization problems arising in practice involve random parameters. For the computation of robust o...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Optimization problems arising in practice usually contain several random parameters. Hence, in order...
summary:The aim of this paper is to present some ideas how to relax the notion of the optimal soluti...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
AbstractStochastic approximation originally proposed by Robbins and Monro for stochastic problems is...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic optimization problems with an objective function that is additive over a finite number of...
textOptimal decision making under uncertainty involves modeling stochastic systems and developing s...
We initiate the design of approximation algorithms for stochastic combinatorial optimization problem...
In this paper, we survey two standard philosophies for finding minimizing solutions of convex object...
This thesis concentrates on different approaches of solving decision making problems with an aspect ...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Optimization problems arising in practice involve random parameters. For the computation of robust o...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Optimization problems arising in practice usually contain several random parameters. Hence, in order...
summary:The aim of this paper is to present some ideas how to relax the notion of the optimal soluti...
An approximation approach with computable error bounds is derived for a class of stochastic dynamic ...
AbstractStochastic approximation originally proposed by Robbins and Monro for stochastic problems is...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic optimization problems with an objective function that is additive over a finite number of...
textOptimal decision making under uncertainty involves modeling stochastic systems and developing s...
We initiate the design of approximation algorithms for stochastic combinatorial optimization problem...
In this paper, we survey two standard philosophies for finding minimizing solutions of convex object...
This thesis concentrates on different approaches of solving decision making problems with an aspect ...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...