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  1. Preference elicitation and robust winner determination for single- and multi-winner social choice.Tyler Lu & Craig Boutilier - 2020 - Artificial Intelligence 279 (C):103203.
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  • On the value of using group discounts under price competition.Reshef Meir, Tyler Lu, Moshe Tennenholtz & Craig Boutilier - 2014 - Artificial Intelligence 216 (C):163-178.
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  • Elicitation strategies for soft constraint problems with missing preferences: Properties, algorithms and experimental studies.Mirco Gelain, Maria Silvia Pini, Francesca Rossi, K. Brent Venable & Toby Walsh - 2010 - Artificial Intelligence 174 (3-4):270-294.
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  • Learning Modulo Theories for constructive preference elicitation.Paolo Campigotto, Stefano Teso, Roberto Battiti & Andrea Passerini - 2021 - Artificial Intelligence 295 (C):103454.
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  • On the equivalence of optimal recommendation sets and myopically optimal query sets.Paolo Viappiani & Craig Boutilier - 2020 - Artificial Intelligence 286 (C):103328.
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  • Incremental elicitation of Choquet capacities for multicriteria choice, ranking and sorting problems.Nawal Benabbou, Patrice Perny & Paolo Viappiani - 2017 - Artificial Intelligence 246 (C):152-180.
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  • Robust winner determination in positional scoring rules with uncertain weights.Paolo Viappiani - 2020 - Theory and Decision 88 (3):323-367.
    Scoring rules constitute a particularly popular technique for aggregating a set of rankings. However, setting the weights associated with rank positions is a crucial task, as different instantiations of the weights can often lead to different winners. In this work we adopt minimax regret as a robust criterion for determining the winner in the presence of uncertainty over the weights. Focusing on two general settings we provide a characterization of the minimax regret rule in terms of cumulative ranks, allowing a (...)
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