We propose a new modeling and solution method for probabilistically constrained optimization problems.The methodology is based on the integration of the stochastic programming and combinatorialpattern recognition fields. It permits the very fast solution of stochastic optimization problems in which the random variables are represented by an extremely large number of scenarios. The methodinvolves the binarization of the probability distribution, and the generation of a consistent partially defined Boolean function (pdBf) representing the combination (F,p) of the binarized probability distributionF and the enforced probability level p. We show that the pdBf representing (F,p) can becompactly extended as a disjunctive normal form (DNF). The DN...
We develop a new modeling and exact solution method for stochastic programming problems thatinclude ...
Stochastic Constraint Optimisation Problems(SCOPs), such as the viral marketing problem and transmis...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
A number of data mining problems on probabilistic networks can be modelled as Stochastic Constraint ...
We develop a new modeling and exact solution method for stochastic programming problems that include...
A number of data mining problems on probabilistic networks can be modeled as Stochastic Constraint O...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
We develop a new modeling and exact solution method for stochastic programming problems thatinclude ...
In this paper we present a direct method for the numerical solution of the constrained optimal contr...
We consider stochastic programming problems with probabilistic constraints involving random variable...
We develop a new modeling and exact solution method for stochastic programming problems thatinclude ...
Stochastic Constraint Optimisation Problems(SCOPs), such as the viral marketing problem and transmis...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
A number of data mining problems on probabilistic networks can be modelled as Stochastic Constraint ...
We develop a new modeling and exact solution method for stochastic programming problems that include...
A number of data mining problems on probabilistic networks can be modeled as Stochastic Constraint O...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
We develop a new modeling and exact solution method for stochastic programming problems thatinclude ...
In this paper we present a direct method for the numerical solution of the constrained optimal contr...
We consider stochastic programming problems with probabilistic constraints involving random variable...
We develop a new modeling and exact solution method for stochastic programming problems thatinclude ...
Stochastic Constraint Optimisation Problems(SCOPs), such as the viral marketing problem and transmis...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...