This paper supplements the results of a new statistical approach to the problem of incomplete information in stochastic programming. The tools of nondifferentiable optimization used here, help to prove the consistency and asymptotic normality of (approximate) optimal solutions without unnatural smoothness assumptions. This allows the theory to take into account the presence of constraints
Integrals of optimal values of random linear programming problems depending on a finite dimensional ...
We review some of the recent results obtained for constrained estimation, involving possibly nondiff...
AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estim...
Under incomplete information about the parameters of the true distribution of the random coefficient...
AbstractIn this paper we shall deal with statistical estimates in stochastic programming problems. T...
International audienceWe discuss a general approach to building non-asymptotic confidence bounds for...
New techniques of local sensitivity analysis in nonsmooth optimization are applied to the problem of...
The paper deals with a statistical approach to stability analysis in nonlinear stochastic programmin...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
This paper studies the consequences of imperfect information for the precision of stochastic optimiz...
The paper deals with the solution of a stochastic optimization problem under incomplete information....
summary:This paper deals with stability of stochastic optimization problems in a general setting. Ob...
summary:The aim of this paper is to present some ideas how to relax the notion of the optimal soluti...
We provide easy to verify sufficient conditions for the consistency and asymptotic normality of a cl...
Integrals of optimal values of random optimization problems depending on a finite dimensional parame...
Integrals of optimal values of random linear programming problems depending on a finite dimensional ...
We review some of the recent results obtained for constrained estimation, involving possibly nondiff...
AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estim...
Under incomplete information about the parameters of the true distribution of the random coefficient...
AbstractIn this paper we shall deal with statistical estimates in stochastic programming problems. T...
International audienceWe discuss a general approach to building non-asymptotic confidence bounds for...
New techniques of local sensitivity analysis in nonsmooth optimization are applied to the problem of...
The paper deals with a statistical approach to stability analysis in nonlinear stochastic programmin...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
This paper studies the consequences of imperfect information for the precision of stochastic optimiz...
The paper deals with the solution of a stochastic optimization problem under incomplete information....
summary:This paper deals with stability of stochastic optimization problems in a general setting. Ob...
summary:The aim of this paper is to present some ideas how to relax the notion of the optimal soluti...
We provide easy to verify sufficient conditions for the consistency and asymptotic normality of a cl...
Integrals of optimal values of random optimization problems depending on a finite dimensional parame...
Integrals of optimal values of random linear programming problems depending on a finite dimensional ...
We review some of the recent results obtained for constrained estimation, involving possibly nondiff...
AbstractIn a variety of statistical problems one needs to solve an equation in order to get an estim...