English

A Security-assured Accuracy-maximised Privacy Preserving Collaborative Filtering Recommendation Algorithm

Cryptography and Security 2015-06-05 v2

Abstract

The neighbourhood-based Collaborative Filtering is a widely used method in recommender systems. However, the risks of revealing customers' privacy during the process of filtering have attracted noticeable public concern recently. Specifically, kkNN attack discloses the target user's sensitive information by creating kk fake nearest neighbours by non-sensitive information. Among the current solutions against kkNN attack, the probabilistic methods showed a powerful privacy preserving effect. However, the existing probabilistic methods neither guarantee enough prediction accuracy due to the global randomness, nor provide assured security enforcement against kkNN attack. To overcome the problems of current probabilistic methods, we propose a novel approach, Partitioned Probabilistic Neighbour Selection, to ensure a required security guarantee while achieving the optimal prediction accuracy against kkNN attack. In this paper, we define the sum of kk neighbours' similarity as the accuracy metric α\alpha, the number of user partitions, across which we select the kk neighbours, as the security metric β\beta. Differing from the present methods that globally selected neighbours, our method selects neighbours from each group with exponential differential privacy to decrease the magnitude of noise. Theoretical and experimental analysis show that to achieve the same security guarantee against kkNN attack, our approach ensures the optimal prediction accuracy.

Keywords

Cite

@article{arxiv.1506.00001,
  title  = {A Security-assured Accuracy-maximised Privacy Preserving Collaborative Filtering Recommendation Algorithm},
  author = {Zhigang Lu and Hong Shen},
  journal= {arXiv preprint arXiv:1506.00001},
  year   = {2015}
}

Comments

arXiv admin note: text overlap with arXiv:1505.07897

R2 v1 2026-06-22T09:44:07.449Z