This paper proposes a new way to construct uncertainty sets for robust optimization. Our approach uses the available historical data for the uncertain parameters and is based on goodness-of-fit statistics. It guarantees that the probability the uncertain constraint holds is at least the prescribed value. Compared to existing safe approximation methods for chance constraints, our approach directly uses the historical data information and leads to tighter uncertainty sets and therefore to better objective values. This improvement is significant, especially when the number of uncertain parameters is low. Other advantages of our approach are that it can handle joint chance constraints easily, it can deal with uncertain parameters that are depen...
The last decade witnessed an explosion in the availability of data for operations research applicati...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...
This paper studies the problem of constructing robust classifiers when the training is plagued with ...
This paper proposes a new way to construct uncertainty sets for robust optimization. Our approach us...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
In this paper we review the different tractable approximations of individual chance constraint probl...
In this paper we study ambiguous chance constrained problems where the distributions of the random p...
We present a data-driven approach for distri-butionally robust chance constrained optimization probl...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
The objective of uncertainty quantification is to certify that a given physical, engineering or econ...
We review and develop different tractable approximations to individual chance constrained problems i...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
We review and develop different tractable approximations to individual chance-constrained problems i...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
The last decade witnessed an explosion in the availability of data for operations research applicati...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...
This paper studies the problem of constructing robust classifiers when the training is plagued with ...
This paper proposes a new way to construct uncertainty sets for robust optimization. Our approach us...
Chance constrained problems are optimization problems where one or more constraints ensure that the ...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
In this paper we review the different tractable approximations of individual chance constraint probl...
In this paper we study ambiguous chance constrained problems where the distributions of the random p...
We present a data-driven approach for distri-butionally robust chance constrained optimization probl...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
The objective of uncertainty quantification is to certify that a given physical, engineering or econ...
We review and develop different tractable approximations to individual chance constrained problems i...
Abstract This paper investigates the computational aspects of distributionally ro-bust chance constr...
We review and develop different tractable approximations to individual chance-constrained problems i...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
The last decade witnessed an explosion in the availability of data for operations research applicati...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...
This paper studies the problem of constructing robust classifiers when the training is plagued with ...