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Private rank aggregation under local differential privacy

journal contribution
posted on 2020-10-01, 00:00 authored by Z Yan, Gang LiGang Li, J Liu
In answer aggregation of crowdsourced data management, rank aggregation aims to combine different agents' answers or preferences over the given alternatives into an aggregate ranking which agrees the most with the preferences. However, since the aggregation procedure relies on a data curator, the privacy within the agents' preference data could be compromised when the curator is untrusted. Existing works that guarantee differential privacy in rank aggregation all assume that the data curator is trusted. In this paper, we formulate and address the problem of locally differentially private rank aggregation, in which the agents have no trust in the data curator. By leveraging the approximate rank aggregation algorithm KwikSort, the Randomized Response mechanism, and the Laplace mechanism, we propose an effective and efficient protocol LDP-KwikSort. Theoretical and empirical results show that the solution LDP-KwikSort:RR can achieve the acceptable trade-off between the utility of aggregate ranking and the privacy protection of agents' pairwise preferences.

History

Journal

International Journal of Intelligent Systems

Volume

35

Issue

10

Pagination

1492 - 1519

Publisher

John Wiley & Sons

Location

Hoboken, N.J.

ISSN

0884-8173

eISSN

1098-111X

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2020, Wiley Periodicals