This thesis concentrates on stochastic programming problems based on empirical and theoretical distributions and their relationship. Firstly, it focuses on the case where the empirical distribution is an independent random sample. The basic properties are shown followed by the convergence between the problem based on the empirical distribution and the same problem applied to the theoretical distribution. The thesis continues with an overview of some types of dependence - m-dependence, mixing, and also more general weak dependence. For sequences with some of these types of dependence, properties are shown to be similar to those holding for independent sequences. In the last section, the theory is demonstrated using numerical examples, and de...
Inequalities, local dependence orderings of reliability or survival functions of random variables ar...
summary:A general multistage stochastic programming problem can be introduced as a finite system of ...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
This thesis concentrates on stochastic programming problems based on empirical and theoretical distr...
AbstractIn this paper we shall deal with statistical estimates in stochastic programming problems. T...
This book gives an account of recent developments in the field of probability and statistics for dep...
The paper deals with two methods of solving optimization programs where uncertainties occur: stochas...
My work makes use of the dependence of stochastic processes, for which I am one of the world-leaders...
AbstractQuantitative estimates of the continuous dependence on the underlying probability measure, a...
Optimization problems depending on a probability measure correspond to many economic and financial a...
In stochastic programming, statistics, or econometrics, the aim is in general the optimization of a ...
Let be an adapted stochastic sequence. Let . In stochastic approximation and various other sequentia...
This thesis concentrates on different approaches of solving decision making problems with an aspect ...
Let ξ: = ξ(ω) (s×1) be a random vector defined on a probability space (Ω, S, P); F, PF the distribut...
This thesis focuses on characteristics of the dependence measures among random quantities, as well a...
Inequalities, local dependence orderings of reliability or survival functions of random variables ar...
summary:A general multistage stochastic programming problem can be introduced as a finite system of ...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
This thesis concentrates on stochastic programming problems based on empirical and theoretical distr...
AbstractIn this paper we shall deal with statistical estimates in stochastic programming problems. T...
This book gives an account of recent developments in the field of probability and statistics for dep...
The paper deals with two methods of solving optimization programs where uncertainties occur: stochas...
My work makes use of the dependence of stochastic processes, for which I am one of the world-leaders...
AbstractQuantitative estimates of the continuous dependence on the underlying probability measure, a...
Optimization problems depending on a probability measure correspond to many economic and financial a...
In stochastic programming, statistics, or econometrics, the aim is in general the optimization of a ...
Let be an adapted stochastic sequence. Let . In stochastic approximation and various other sequentia...
This thesis concentrates on different approaches of solving decision making problems with an aspect ...
Let ξ: = ξ(ω) (s×1) be a random vector defined on a probability space (Ω, S, P); F, PF the distribut...
This thesis focuses on characteristics of the dependence measures among random quantities, as well a...
Inequalities, local dependence orderings of reliability or survival functions of random variables ar...
summary:A general multistage stochastic programming problem can be introduced as a finite system of ...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...