Abstract
The upsurge in the number of web users over the last two decades has resulted in a significant growth of online information. This information growth calls for recommenders that personalize the information proposed to each individual user. Nevertheless, personalization also opens major privacy concerns.
This paper presents
D
2
P
, a novel protocol that ensures a strong form of differential privacy, which we call distance-based differential privacy, and which is particularly well suited to recommenders.
D
2
P
avoids revealing exact user profiles by creating
altered
profiles where each item is replaced with another one at some
distance.
We evaluate
D
2
P
analytically and experimentally on MovieLens and Jester datasets and compare it with other private and non-private recommenders.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
35 articles.
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