A number of data mining problems on probabilistic networks can be modeled as Stochastic Constraint Optimization and Satisfaction Problems, i.e., problems that involve objectives or constraints with a stochastic component. Earlier methods for solving these problems used Ordered Binary Decision Diagrams (OBDDs) to represent constraints on probability distributions, which were decomposed into sets of smaller constraints and solved by Constraint Programming (CP) or Mixed Integer Programming (MIP) solvers. For the specific case of monotonic distributions, we propose an alternative method: a new propagator for a global OBDD-based constraint. We show that this propagator is (sub-)linear in the size of the OBDD, and maintains domain consistency. We...
To model combinatorial decision problems involving uncertainty and probability, we introduce scenari...
We are interested in single commodity stochastic network design problems under probabilistic constra...
A Bayesian network is graphical representation of the probabilistic relationships among set of varia...
A number of data mining problems on probabilistic networks can be modelled as Stochastic Constraint ...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
Constraint satisfaction and optimization (CSP(O)), probabilistic inference, and data mining are thre...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
To model decision problems involving uncertainty and probability, we propose stochastic constraint 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 are interested in single commodity stochastic network design problems under prob-abilistic constr...
To model combinatorial decision problems involving uncertainty and probability, we introduce scenari...
We are interested in single commodity stochastic network design problems under probabilistic constra...
A Bayesian network is graphical representation of the probabilistic relationships among set of varia...
A number of data mining problems on probabilistic networks can be modelled as Stochastic Constraint ...
A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Op...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
Constraint satisfaction and optimization (CSP(O)), probabilistic inference, and data mining are thre...
We show that a number of problems in Artificial Intelligence can be seen as Stochastic Constraint Op...
To model decision problems involving uncertainty and probability, we propose stochastic constraint 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 are interested in single commodity stochastic network design problems under prob-abilistic constr...
To model combinatorial decision problems involving uncertainty and probability, we introduce scenari...
We are interested in single commodity stochastic network design problems under probabilistic constra...
A Bayesian network is graphical representation of the probabilistic relationships among set of varia...