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Differential Privacy Location Protection Method Based on the Markov Model

机译:基于马尔可夫模型的差分隐私位置保护方法

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Location-based services (LBS) have become an important research area with the rapid development of mobile Internet technology, GPS positioning technology, and the widespread application of smart phones and social networks. LBS can provide convenience and flexibility for the users’ daily life, but at the same time, it also brings security risks to the users’ privacy. Untrusted or malicious LBS servers can collect users’ location data through various ways and disclose it to the third party, thus causing users’ privacy leakage. In this paper, a differential privacy location protection method based on the Markov model for user’s location privacy is proposed. Firstly, the transition probability matrix between states of the - order Markov model is used to predict the occurrence state and development trend of events; thereby, the user’s location is predicted, and then a location prediction algorithm based on the Markov model (LPAM) is proposed. Secondly, a location protection algorithm based on differential privacy (LPADP) is proposed, in which location privacy tree (LPT) is constructed according to the location data and the difficulty of retrieval, the two nodes with the largest predicted value of LPT are allocated with a reasonable privacy budget, and Laplace noise is added to protect location privacy. Theoretical analysis and experimental results show that the proposed method not only meets the requirements of differential privacy and protects location privacy effectively but also has high data availability and low time complexity.
机译:基于位置的服务(LBS)已成为移动互联网技术,GPS定位技术的快速发展的重要研究领域,以及智能手机和社交网络的广泛应用。 LBS可以为用户的日常生活提供便利性和灵活性,但同时,它还为用户的隐私带来了安全风险。不受信任或恶意LBS服务器可以通过各种方式收集用户的位置数据并将其披露给第三方,从而导致用户的隐私泄漏。本文提出了一种基于Markov模型的用户位置隐私的差异隐私位置保护方法。首先,使用秩序标准模型的状态之间的转换概率矩阵来预测事件的发生状态和发展趋势;由此,预测用户的位置,然后提出了一种基于马尔可夫模型(LPAM)的位置预测算法。其次,提出了一种基于差分隐私(LPADP)的位置保护算法,其中根据位置数据构建位置隐私树(LPT),并且通过LPT的最大预测值的两个节点进行分配添加了合理的隐私预算,并增加了拉普拉斯噪声来保护地点隐私。理论分析和实验结果表明,该方法不仅符合差异隐私的要求和有效保护地点隐私,而且还具有高数据可用性和低时间复杂性。

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