In this paper, we discuss linear programs in which the data that specify the constraints are subject to random uncertainty. A usual approach in this setting is to enforce the constraints up to a given level of probability. We show that for a wide class of probability distributions (i.e. radial distributions) on the data, the probability constraints can be explicitly converted into convex second order cone (SOC) constraints, hence the probability constrained linear program can be solved exactly with great efficiency. We next analyze the situation when the probability distribution of the data in not completely specified, but it is only known to belong to a given class of distributions. In this case, we provide explicit convex conditions that ...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
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...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
In the companion paper we introduced a theory for random convex programs (RCPs), deriving tight uppe...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
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 engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
In this paper, we discuss linear programs in which the data that specify the constraints are subject...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
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...
1 Abstract: This thesis deals with chance constrained stochastic programming problems. We consider s...
In the companion paper we introduced a theory for random convex programs (RCPs), deriving tight uppe...
The thesis presents stochastic programming with chance contraints. We begin with the definition of c...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
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 engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many engineering problems can be cast as optimization problems subject to convex constraints that ar...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...