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Probabilistic assignment: an extension approach

Authors
Cho, Wonki Jo
Issue Date
6월-2018
Publisher
SPRINGER
Citation
SOCIAL CHOICE AND WELFARE, v.51, no.1, pp.137 - 162
Indexed
SSCI
SCOPUS
Journal Title
SOCIAL CHOICE AND WELFARE
Volume
51
Number
1
Start Page
137
End Page
162
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/75027
DOI
10.1007/s00355-018-1110-z
ISSN
0176-1714
Abstract
We study the problem of allocating objects using lotteries when agents only submit preferences over objects. A standard approach is to "extend" agents' preferences over objects to preferences over lotteries, using (first-order) stochastic dominance, or the sd-extension. Following (Cho, Games Econ Behav 95:168-177, 2016a), we complement this approach with two alternative extensions, the dl- and ul- extensions, that give rise to lexicographic preferences (dl stands for "downward lexicographic" and ul for "upward lexicographic") and apply all three of them in tandem to probabilistic assignment. Each property of rules now has three versions that vary with the extension chosen. We introduce a family of rules that generalizes the probabilistic serial rule. Then we study their behavior, as well as that of the random priority rule, in terms of efficiency, no-envy, and strategy-proofness.
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