Random convex programs (RCPs) are convex optimization problems subject to a finite number of constraints (scenarios) that are extracted according to some probability distribution. The optimal objective value of an RCP and its associated optimal solution (when it exists), are random variables: RCP theory is mainly concerned with providing probabilistic assessments on the objective and on the probability of constraint violation for the RCP solution. In a two-parts contribution, we give a self-contained overview of RCP theory by both re-deriving and extending known results via new proofs, and by providing novel advancements. In this first-part paper we introduce the basic concepts and derive an explicit and tight upper bound on the objective a...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
In the companion paper we introduced a theory for random convex programs (RCPs), deriving tight uppe...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
We consider a class of mixed-integer optimization problems subject to N randomly drawn convex constr...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
We consider a chance constrained problem, where one seeks to minimize a convex objective over soluti...
We consider a class of mixed-integer optimization problems subject to N randomly drawn convex constr...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
In the companion paper we introduced a theory for random convex programs (RCPs), deriving tight uppe...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
We consider a class of mixed-integer optimization problems subject to N randomly drawn convex constr...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
We consider a chance constrained problem, where one seeks to minimize a convex objective over soluti...
We consider a class of mixed-integer optimization problems subject to N randomly drawn convex constr...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...