This thesis concentrates on different approaches of solving decision making problems with an aspect of randomness. The basic methodologies of converting stochastic optimization problems to deterministic optimization problems are described. The proximity of solution of a problem and its empirical counterpart is shown. The empirical counterpart is used when we don't know the distribution of the random elements of the former problem. The distribution with heavy tails, stable distribution and their relationship is described. The stochastic dominance and the possibility of defining problems with stochastic dominance is introduced. The proximity of solution of problem with second order stochastic dominance and the solution of its empirical counte...
The main topic of this thesis is the application of stochastic dominance constrains to portfolio opt...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This paper surveys the use of stochastic dominance to decision making under uncertainty. The first p...
Stochastic methods are present in our daily lives, especially when we need to make a decision based ...
This thesis focuses on stochastic dominance in portfolio selection problems. The thesis recalls basi...
In practice we often have to solve optimization problems with several criteria. These problems are c...
This thesis' topic is stochastic programming, in particular with regard to portfolio optimization an...
The deterministic theory of graphs and networks is used successfully in cases where no random compon...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
Optimization problems arising in practice involve random model parameters. This book features many i...
This book presents the main methodological and theoretical developments in stochastic global optimiz...
This diploma thesis deals with stochastic dominance. The goal is to lay the foundations for defining...
The dissertation investigates some important aspects of managerial decision making under conditions ...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
The main topic of this thesis is the application of stochastic dominance constrains to portfolio opt...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This paper surveys the use of stochastic dominance to decision making under uncertainty. The first p...
Stochastic methods are present in our daily lives, especially when we need to make a decision based ...
This thesis focuses on stochastic dominance in portfolio selection problems. The thesis recalls basi...
In practice we often have to solve optimization problems with several criteria. These problems are c...
This thesis' topic is stochastic programming, in particular with regard to portfolio optimization an...
The deterministic theory of graphs and networks is used successfully in cases where no random compon...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
Optimization problems arising in practice involve random model parameters. This book features many i...
This book presents the main methodological and theoretical developments in stochastic global optimiz...
This diploma thesis deals with stochastic dominance. The goal is to lay the foundations for defining...
The dissertation investigates some important aspects of managerial decision making under conditions ...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
The main topic of this thesis is the application of stochastic dominance constrains to portfolio opt...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This paper surveys the use of stochastic dominance to decision making under uncertainty. The first p...