English

Stochastic Constraint Optimization using Propagation on Ordered Binary Decision Diagrams

Artificial Intelligence 2018-07-04 v1

Abstract

A number of problems in relational Artificial Intelligence can be viewed as Stochastic Constraint Optimization Problems (SCOPs). These are constraint optimization problems that involve objectives or constraints with a stochastic component. Building on the recently proposed language SC-ProbLog for modeling SCOPs, we propose a new method for solving these problems. Earlier methods used Probabilistic Logic Programming (PLP) techniques to create Ordered Binary Decision Diagrams (OBDDs), which were decomposed into smaller constraints in order to exploit existing constraint programming (CP) solvers. We argue that this approach has as drawback that a decomposed representation of an OBDD does not guarantee domain consistency during search, and hence limits the efficiency of the solver. For the specific case of monotonic distributions, we suggest an alternative method for using CP in SCOP, based on the development of a new propagator; we show that this propagator is linear in the size of the OBDD, and has the potential to be more efficient than the decomposition method, as it maintains domain consistency.

Keywords

Cite

@article{arxiv.1807.01079,
  title  = {Stochastic Constraint Optimization using Propagation on Ordered Binary Decision Diagrams},
  author = {Anna L. D. Latour and Behrouz Babaki and Siegfried Nijssen},
  journal= {arXiv preprint arXiv:1807.01079},
  year   = {2018}
}

Comments

Eighth International Workshop on Statistical Relational AI, in conjunction with the 2018 International Joint Conference on Artificial Intelligence (IJCAI 2018)