Location-Based Recommendation Services (LBRS) has seen an unprecedented rise in its usage in recent years. LBRS facilitates a user by recommending services based on his location and past preferences. However, leveraging such services comes at a cost of compromising one's sensitive information like their shopping preferences, lodging places, food habits, recently visited places, etc. to the third-party servers. Losing such information could be crucial and threatens one's privacy. Nowadays, the privacy-aware society seeks solutions that can provide such services, with minimized risks. Recently, a few privacy-preserving recommendation services have been proposed that exploit the fully homomorphic encryption (FHE) properties to address the issue. Though, it reduced privacy risks but suffered from heavy computational overheads that ruled out their commercial applications. Here, we propose SHELBRS, a lightweight LBRS that is based on switchable homomorphic encryption (SHE), which will benefit the users as well as the service providers. A SHE exploits both the additive as well as the multiplicative homomorphic properties but with comparatively much lesser processing time as it's FHE counterpart. We evaluate the performance of our proposed scheme with the other state-of-the-art approaches without compromising security.
翻译:近些年来,基于位置的建议服务(LBRS)的使用出现了前所未有的增长。LBRS通过推荐基于其位置和过去偏好的服务为用户提供便利。然而,利用这类服务的代价是将一个人的敏感信息,如购物偏好、住宿场所、饮食习惯、最近访问过的地方等,泄露给第三方服务器。失去这类信息可能至关重要,并威胁到个人隐私。如今,有隐私意识的社会寻求能够提供这类服务的解决办法,风险最小化。最近,提出了少数一些隐私保护建议服务,利用完全同质加密(FHE)的属性解决这一问题。虽然它减少了隐私风险,但因排除其商业应用的重计算管理而蒙受损失。我们在这里建议SHELBRS,一个基于可变同质加密(SHE)的轻量的LBRS,它将使用户和服务提供者受益。AHE利用添加剂和多种相异性同质特性,但与其他FHE对口单位相比,处理时间相对较少。我们用其他方法评估了我们提议的州安全计划的表现,而没有评估它的安全妥协性。