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Two-Phase Locality-Sensitive Hashing for Privacy-Preserving Distributed Service Recommendation

机译:隐私保护分布式服务建议的两阶段本地敏感哈希

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With the ever-increasing volume of services registered in various web communities, it becomes a challenging task to find the web services that a target user is really interested in from the massive candidates. In this situation, Collaborative Filtering (i.e., CF) technique is introduced to alleviate the heavy burden on the service selection decisions of target users. However, present CF-based recommendation approaches often assume that the recommendation bases, i.e., historical service quality data are centralized, without considering the distributed service recommendation scenarios where data are multi-sourced. Furthermore, distributed service recommendation calls for the collaborations among multiple involved parties, during which the private information of users may be exposed. In view of these challenges, we propose a novel privacy-preserving distributed service recommendation approach based on two-phase Locality-Sensitive Hashing (LSH), named SerRectwp-LSH, in this paper. Concretely, in SerRectwo_LSH, we first look for the "similar friends" of a target user through a privacy-preserving two-phase LSH process; afterwards, we determine the services preferred by the "similar friends" of the target user, and then recommend them to the target user. Finally, through a set of experiments conducted on a real distributed service quality dataset WS-DREAM, we validate the feasibility of our proposal in terms of recommendation accuracy and efficiency while guaranteeing privacy-preservation.
机译:随着在各种Web社区中注册的服务数量的不断增加,从大量候选人中寻找目标用户真正感兴趣的Web服务已成为一项具有挑战性的任务。在这种情况下,引入了协同过滤(CF)技术来减轻目标用户的服务选择决策的沉重负担。但是,当前基于CF的推荐方法经常假设推荐基础即历史服务质量数据是集中的,而不考虑其中数据是多源的分布式服务推荐场景。此外,分布式服务推荐要求多个参与方之间的合作,在此期间可以公开用户的私人信息。针对这些挑战,本文提出了一种基于两阶段局部敏感哈希(LSH)的新型隐私保护分布式服务推荐方法,即SerRectwp-LSH。具体而言,在SerRectwo_LSH中,我们首先通过保护隐私的两阶段LSH过程寻找目标用户的“相似朋友”。之后,我们确定目标用户的“相似朋友”所偏爱的服务,然后将其推荐给目标用户。最后,通过在真实的分布式服务质量数据集WS-DREAM上进行的一组实验,我们在保证准确性和保护隐私的同时,验证了我们建议的可行性。

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