English

Constrained Optimization with Qualitative Preferences

Artificial Intelligence 2021-09-28 v1

Abstract

The Conditional Preference Network (CP-net) graphically represents user's qualitative and conditional preference statements under the ceteris paribus interpretation. The constrained CP-net is an extension of the CP-net, to a set of constraints. The existing algorithms for solving the constrained CP-net require the expensive dominance testing operation. We propose three approaches to tackle this challenge. In our first solution, we alter the constrained CP-net by eliciting additional relative importance statements between variables, in order to have a total order over the outcomes. We call this new model, the constrained Relative Importance Network (constrained CPR-net). Consequently, We show that the Constrained CPR-net has one single optimal outcome (assuming the constrained CPR-net is consistent) that we can obtain without dominance testing. In our second solution, we extend the Lexicographic Preference Tree (LP-tree) to a set of constraints. Then, we propose a recursive backtrack search algorithm, that we call Search-LP, to find the most preferable outcome. We prove that the first feasible outcome returned by Search-LP (without dominance testing) is also preferable to any other feasible outcome. Finally, in our third solution, we preserve the semantics of the CP-net and propose a divide and conquer algorithm that compares outcomes according to dominance testing.

Keywords

Cite

@article{arxiv.2109.12179,
  title  = {Constrained Optimization with Qualitative Preferences},
  author = {Sultan Ahmed and Malek Mouhoub},
  journal= {arXiv preprint arXiv:2109.12179},
  year   = {2021}
}

Comments

27 pages

R2 v1 2026-06-24T06:18:38.045Z