It is known that optimization problems depending on a probability measure correspond to many applications. It is also known that these problems belong mostly to a class of nonlinear optimization problems and, moreover, that very often an ``underlying" probability measure is not completely known. The aim of the research report is to deal with the case when an empirical measure substitutes the theoretical one. In particular, the aim is to generalize reults dealing with convergence rate in the case of empirical esrimates. The introduced results are based on the stability results corresponding to the Wasserstein metric. A relationship berween tails of one-dimensional marginal distribution functions and exponentional rate of convergence ar...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
An upper bound is given for the mean square Wasserstein distance between the empirical measure of a ...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
Optimization problems depending on a probability measure correspond to many economic applications. S...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
Fortet-Mourier (FM) probability metrics are important probability metrics, which have been widely ad...
Abstract. Optimization problems depending on a probability measure correspond to many eco-nomic appl...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
The stability of stochastic programs with mixed-integer recourse under perturbations of the integrat...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
Usually, it is very complicated to investigate and to solve optimization problems depending on a pro...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
An upper bound is given for the mean square Wasserstein distance between the empirical measure of a ...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
Classical optimization problems depending on a probability measure belong mostly to nonlinear determ...
Optimization problems depending on a probability measure correspond to many economic applications. S...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
summary:Economic and financial processes are mostly simultaneously influenced by a random factor and...
Fortet-Mourier (FM) probability metrics are important probability metrics, which have been widely ad...
Abstract. Optimization problems depending on a probability measure correspond to many eco-nomic appl...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
The stability of stochastic programs with mixed-integer recourse under perturbations of the integrat...
summary:“Classical” optimization problems depending on a probability measure belong mostly to nonlin...
Usually, it is very complicated to investigate and to solve optimization problems depending on a pro...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
summary:We deal with a stochastic programming problem that can be inconsistent. To overcome the inco...
An upper bound is given for the mean square Wasserstein distance between the empirical measure of a ...