位置推荐与隐私保护

Chang Su, Yumeng Chen, Xianzhong Xie
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引用次数: 5

摘要

随着互联网技术的发展,用户对个人位置数据的隐私性越来越重视。为了掩盖用户原始的签到数据信息,防止攻击者利用用户的朋友关系推断单个用户的隐私信息,本文提出了一种基于差分隐私和随机扰动的混合隐私保护方法,将用户的朋友关系结合起来实现位置推荐和隐私保护。数据分析表明,可以通过添加不同程度的随机噪声来设置隐私级别,从而达到个性化隐私保护的目的。此外,使用差分隐私保护用户的朋友关系,使得位置推荐方法的隐私保护效果更好。在真实数据集上的实验表明,该方法在保护用户隐私信息的同时,具有一定的位置推荐精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location Recommendation with Privacy Protection
With the development of Internet technology, users pay more and more attention to the privacy of personal location data. In order to cover up the user's original check-in data information and prevent attackers from using the user's friend relationship to infer the privacy information of a single user, our paper proposed a hybrid privacy protection method based on differential privacy and random perturbation, and combined the user's friend relationship to realize the location recommendation with privacy protection. Data analysis shows that the privacy level can be set by adding different degrees of random noise to achieve the purpose of personalized privacy protection. Furthermore, differential privacy is used to protect the user's friend relationship, which makes the privacy protection effect of the location recommendation method better. Experiments on real datasets, show that this method can protect users' privacy information and at the same time have a certain accuracy of location recommendation.
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