We consider a stochastic mathematical program with equilibrium constraints (SMPEC) and show that, under certain assumptions, global optima and stationary solutions are robust with respect to changes in the underlying probability distribution. In particular, the discretization scheme sample average approximation (SAA), which is convergent for both global optima and stationary solutions, can be combined with the robustness results to motivate the use of SMPECs in practice. We then study two new and natural extensions of the SMPEC model. First, we establish the robustness of global optima and stationary solutions to an SMPEC model where the upper-level objective is the risk measure known as conditional value-at-risk (CVaR). Second, we analyze ...
The paper deals with two wide areas of optimization theory: stochastic and robust programming. We sp...
We consider the solution of a system of stochastic generalized equations (SGE) where the underlying ...
We apply the sample average approximation (SAA) method to risk-neutral optimization problems governe...
We consider a stochastic mathematical program with equilibrium constraints (SMPEC) and show that, un...
In a companion paper (Cromvik and Patriksson, Part I, J. Optim. Theory Appl., 2010), the mathematica...
The major theme of this thesis is nonlinear programming with an emphasis on applications and robust ...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
In this article, we discuss the sample average approximation (SAA) method applied to a class of stoc...
This thesis consists of three parts, which devote to three topics on optimization under uncertainty ...
This thesis investigates several topics involving robust control of stochastic nonlinear systems. Fi...
Developing first order optimality conditions for two-stage stochastic mathematical programs with equ...
We consider the solution of a system of stochastic generalized equations (SGE) where the underlying ...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
Part 3: Stochastic Optimization and ControlInternational audienceDue to their frequently observed la...
The paper deals with two wide areas of optimization theory: stochastic and robust programming. We s...
The paper deals with two wide areas of optimization theory: stochastic and robust programming. We sp...
We consider the solution of a system of stochastic generalized equations (SGE) where the underlying ...
We apply the sample average approximation (SAA) method to risk-neutral optimization problems governe...
We consider a stochastic mathematical program with equilibrium constraints (SMPEC) and show that, un...
In a companion paper (Cromvik and Patriksson, Part I, J. Optim. Theory Appl., 2010), the mathematica...
The major theme of this thesis is nonlinear programming with an emphasis on applications and robust ...
Stochastic optimization, especially multistage models, is well known to be computationally excru-cia...
In this article, we discuss the sample average approximation (SAA) method applied to a class of stoc...
This thesis consists of three parts, which devote to three topics on optimization under uncertainty ...
This thesis investigates several topics involving robust control of stochastic nonlinear systems. Fi...
Developing first order optimality conditions for two-stage stochastic mathematical programs with equ...
We consider the solution of a system of stochastic generalized equations (SGE) where the underlying ...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
Part 3: Stochastic Optimization and ControlInternational audienceDue to their frequently observed la...
The paper deals with two wide areas of optimization theory: stochastic and robust programming. We s...
The paper deals with two wide areas of optimization theory: stochastic and robust programming. We sp...
We consider the solution of a system of stochastic generalized equations (SGE) where the underlying ...
We apply the sample average approximation (SAA) method to risk-neutral optimization problems governe...