Practical and privacy-preserving geo-social-based POI recommendation

Qi Xu , Hui Zhu , Yandong Zheng , Fengwei Wang , Le Gao
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Abstract

With the rapid development of location-based services and online social networks, POI recommendation services considering geographic and social factors have received extensive attention. Meanwhile, the vigorous development of cloud computing has prompted service providers to outsource data to the cloud to provide POI recommendation services. However, there is a degree of distrust of the cloud by service providers. To protect digital assets, service providers encrypt data before outsourcing it. However, encryption reduces data availability, making it more challenging to provide POI recommendation services in outsourcing scenarios. Some privacy-preserving schemes for geo-social-based POI recommendation have been presented, but they have some limitations in supporting group query, considering both geographic and social factors, and query accuracy, making these schemes impractical. To solve this issue, we propose two practical and privacy-preserving geo-social-based POI recommendation schemes for single user and group users, which are named GSPR-S and GSPR-G. Specifically, we first utilize the quad tree to organize geographic data and the MinHash method to index social data. Then, we apply BGV fully homomorphic encryption to design some private algorithms, including a private max/min operation algorithm, a private rectangular set operation algorithm, and a private rectangular overlapping detection algorithm. After that, we use these algorithms as building blocks in our schemes for efficiency improvement. According to security analysis, our schemes are proven to be secure against the honest-but-curious cloud servers, and experimental results show that our schemes have good performance.

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基于地理社交的实用且保护隐私的 POI 推荐
随着基于位置的服务和在线社交网络的快速发展,考虑地理和社交因素的 POI 推荐服务受到广泛关注。与此同时,云计算的蓬勃发展也促使服务提供商将数据外包给云,以提供 POI 推荐服务。然而,服务提供商对云存在一定程度的不信任。为了保护数字资产,服务提供商会在外包数据前对其进行加密。然而,加密降低了数据的可用性,使得在外包场景中提供 POI 推荐服务更具挑战性。目前已经提出了一些基于地理社交的 POI 推荐的隐私保护方案,但这些方案在支持群组查询、考虑地理和社交因素以及查询准确性方面存在一些局限性,使得这些方案不切实际。为了解决这个问题,我们提出了两种实用且能保护隐私的基于地理社交的 POI 推荐方案,分别适用于单个用户和群体用户,分别命名为 GSPR-S 和 GSPR-G。具体来说,我们首先利用四叉树来组织地理数据,并利用 MinHash 方法来索引社交数据。然后,我们应用 BGV 全同态加密技术设计了一些私有算法,包括私有最大/最小运算算法、私有矩形集运算算法和私有矩形重叠检测算法。之后,我们将这些算法作为我们方案的构建模块,以提高效率。根据安全性分析,我们的方案被证明可以安全地对抗诚实但好奇的云服务器,实验结果表明我们的方案具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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