The assignment problem is one of the most wellstudied settings in social choice, matching, and discrete allocation. We consider this problem with the additional feature that agents' preferences involve uncertainty. The setting with uncertainty leads to a number of interesting questions including the following ones. How to compute an assignment with the highest probability of being Pareto optimal? What is the complexity of computing the probability that a given assignment is Pareto optimal? Does there exist an assignment that is Pareto optimal with probability one? We consider these problems under two natural uncertainty models: (1) the lottery model in which each agent has an independent probability distribution over linear orders and (2) the joint probability model that involves a joint probability distribution over preference profiles. For both of these models, we present a number of algorithmic and complexity results highlighting the difference and similarities in the complexity of the two models.
CITATION STYLE
Aziz, H., De Haan, R., & Rastegari, B. (2017). Pareto optimal allocation under uncertain preferences. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 0, pp. 77–83). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2017/12
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