2022
DOI: 10.48550/arxiv.2206.11561
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ReuseKNN: Neighborhood Reuse for Privacy-Aware Recommendations

Abstract: User-based KNN recommender systems (UserKNN ) utilize the rating data of a target user's 𝑘 nearest neighbors in the recommendation process. This, however, increases the privacy risk of the neighbors since their rating data might be exposed to other users or malicious parties. To reduce this risk, existing work applies differential privacy by adding randomness to the neighbors' ratings, which reduces the accuracy of UserKNN. In this work, we introduce ReuseKNN, a novel privacy-aware recommender system. The mai… Show more

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