Elicitation strategies for fuzzy constraint problems with missing preferences: algorithms and experimental studies
Mirco Gelain, Maria Pini, Francesca Rossi, Brent Venable, Toby, Walsh

TL;DR
This paper explores algorithms for solving fuzzy constraint problems with missing preferences, aiming to find optimal solutions while minimizing user elicitation effort, and demonstrates their effectiveness through experimental comparisons.
Contribution
It introduces a unified framework for solving fuzzy constraint problems with missing preferences, proposing algorithms that balance elicitation and user effort, validated by experimental results.
Findings
Some algorithms find optimal solutions with minimal preference elicitation.
Best algorithms require low user effort and ask for few preferences.
Algorithms effectively handle hard problems with missing constraints.
Abstract
Fuzzy constraints are a popular approach to handle preferences and over-constrained problems in scenarios where one needs to be cautious, such as in medical or space applications. We consider here fuzzy constraint problems where some of the preferences may be missing. This models, for example, settings where agents are distributed and have privacy issues, or where there is an ongoing preference elicitation process. In this setting, we study how to find a solution which is optimal irrespective of the missing preferences. In the process of finding such a solution, we may elicit preferences from the user if necessary. However, our goal is to ask the user as little as possible. We define a combined solving and preference elicitation scheme with a large number of different instantiations, each corresponding to a concrete algorithm which we compare experimentally. We compute both the number…
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Taxonomy
TopicsConstraint Satisfaction and Optimization · Data Management and Algorithms · AI-based Problem Solving and Planning
