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Privacy-preserving item-based Collaborative Filtering using semi-distributed Belief Propagation

机译:使用半分布式置信度传播的基于隐私保护项的协作过滤

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Recommender systems are increasingly employed by e-commerce websites to suggest items to users that meet their preferences. Collaborative Filtering (CF), as the most popular recommendation algorithm, exploits the collected historic user ratings to predict ratings on unseen items for users. However, traditional recommender systems are run by the commercial websites, and thus users have to disclose their personal rating data to the websites in order to receive recommendations. This raises the privacy issue, as user ratings can be used to reveal sensitive personal information. In this paper, we propose a privacy-preserving item-based CF recommender system using semi-distributed Belief Propagation (BP), where rating data are stored at the user side. Firstly, we formulate the item similarity computation as a probabilistic inference problem on the factor graph, which can be efficiently solved by applying the BP algorithm. To avoid disclosing user ratings to the server or other user peers, we then introduce a semi-distributed architecture for the BP algorithm, where only probabilistic messages on item similarity are exchanged between the server and users. Finally, an active user locally generates rating predictions by averaging his own ratings on items weighted by their similarities to unseen items. As such, the proposed recommender system preserves user privacy without relying on any privacy techniques, e.g., obfuscation and cryptography. Further, there is no compromise in recommendation performance compared to the centralized counterpart of the proposed algorithm. Through experiments on the MovieLens dataset, we show that the proposed algorithm achieves superior accuracy.
机译:电子商务网站越来越多地使用推荐系统来向用户推荐符合其偏好的项目。协作过滤(CF)作为最受欢迎的推荐算法,它利用收集到的历史用户评分来预测用户看不到的商品的评分。但是,传统的推荐系统由商业网站运行,因此用户必须向网站披露其个人评分数据才能接收推荐。由于用户等级可用于泄露敏感的个人信息,因此这引起了隐私问题。在本文中,我们提出了一种使用半分布式信仰传播(BP)的,基于隐私保护项的CF推荐系统,其中,评分数据存储在用户端。首先,我们将项目相似度计算公式化为因子图上的一个概率推断问题,可以通过应用BP算法来有效解决。为了避免向服务器或其他用户对等方泄露用户评级,我们然后为BP算法引入了一种半分布式架构,在该架构中,服务器和用户之间仅交换关于项目相似性的概率消息。最后,活动用户通过对自己的评分(与未看过的项目相似度加权的项目)取平均,从而在本地生成评分预测。这样,所提出的推荐器系统在不依赖于任何隐私技术(例如,混淆和加密)的情况下保留了用户隐私。另外,与所提出算法的集中式对应物相比,在推荐性能上没有任何妥协。通过在MovieLens数据集上进行的实验,我们证明了该算法具有较高的准确性。

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