The goal of this research was to develop new algorithmic techniques for solving large-scale numerical optimization problems, focusing on problems classes that have proven to be among the most challenging for practitioners: those involving uncertainty and those involving nonconvexity. This research advanced the state-of-the-art in solving mixed integer linear programs containing symmetry, mixed integer nonlinear programs, and stochastic optimization problems
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Power system planning and operation offers multitudinous opportunities for optimization methods. In ...
This paper presents an overview of our current research on parallel nonlinear optimization for decis...
In this paper, we provide a general classification of mathematical optimization problems, followed b...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
This expository article discusses approaches for modeling optimization problems that involve uncerta...
Computational optimization is an active and important area of study, practice, and research today. I...
Optimization problems in engineering often have nonconvex objectives and constraints and require glo...
Optimization Methods and Software publishes refereed papers on the latest developments in the theory...
The mathematical modeling of systems often requires the use of both nonlinear and discrete component...
The goal of this paper is to compare two formulations of optimi- zation problems of vertex coloring ...
Nonconvex Optimization is a multi-disciplinary research field that deals with the characterization a...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Power system planning and operation offers multitudinous opportunities for optimization methods. In ...
This paper presents an overview of our current research on parallel nonlinear optimization for decis...
In this paper, we provide a general classification of mathematical optimization problems, followed b...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
This expository article discusses approaches for modeling optimization problems that involve uncerta...
Computational optimization is an active and important area of study, practice, and research today. I...
Optimization problems in engineering often have nonconvex objectives and constraints and require glo...
Optimization Methods and Software publishes refereed papers on the latest developments in the theory...
The mathematical modeling of systems often requires the use of both nonlinear and discrete component...
The goal of this paper is to compare two formulations of optimi- zation problems of vertex coloring ...
Nonconvex Optimization is a multi-disciplinary research field that deals with the characterization a...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Power system planning and operation offers multitudinous opportunities for optimization methods. In ...
This paper presents an overview of our current research on parallel nonlinear optimization for decis...