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Distributed Differentially Private Ranking Aggregation

Version 2 2024-05-30, 16:47
Version 1 2022-05-20, 09:14
conference contribution
posted on 2024-05-30, 16:47 authored by B Song, Q Lan, Kelvin LiKelvin Li, Gang LiGang Li
Ranking aggregation is commonly adopted in cooperative decision-making to assist combining multiple rankings into a single representative. To protect the actual ranking of each individual, some privacy-preserving strategies, such as differential privacy, are often used. This, however, does not consider the scenario where the curator, who collects all rankings from individuals, is untrustworthy. This paper proposed a mechanism to solve the above issue using the distribute differential privacy framework. The proposed mechanism collects locally differential private rankings from individuals, then randomly permutes pairwise rankings using a shuffle model to further amplify the privacy protection. The final representative is produced by hierarchical rank aggregation. The mechanism was theoretically analysed and experimentally compared against existing methods, and demonstrated competitive results in both the output accuracy and privacy protection.

History

Volume

13280 LNAI

Pagination

236-248

Location

Chengdu, China

Start date

2022-05-16

End date

2022-05-19

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783031059322

Language

English

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

Gama J, Li T, Yu Y, Chen E, Zheng Y, Teng F

Title of proceedings

Advances in Knowledge Discovery and Data Mining

Event

26th Pacific-Asia Conference, PAKDD 2022

Publisher

Springer Link

Place of publication

Berlin, Germany

Series

Lecture notes in computer science