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Group - oriented Location Privacy Protection for Mobile Users

机译:对移动用户的集团定位位置隐私保护

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摘要

In order to achieve privacy protection without reducing the availability of data, it is required to diminish the location data error between the location data before and after privacy protection while maintaining the characteristics of groups of user’s location. Aiming at the above requirement, we realize the group - oriented location privacy based on the k-anonymity algorithm and the grid method in crowdsensing task assignment. Firstly, the initial grid size is determined based on the overall density of users in the target area, which is to be divided into grid units. The number of users in each grid unit is calculated, whose relationship with the anonymous parameter k affects the next operation to grid units. Secondly, the grid mergence is conducted on those selected by the heuristic search based on the heuristic search of the clustering result. Then, the grid division is carried out on the grids which need to be divided by means of equilibrium segmentation based on geographic midline. Finally, the anonymous region is created for the grid area satisfying the k-anonymity requirement, achieving the k-anonymity location privacy protection. Experiments show that our method can minimize the location deviation while keep the privacy protection intensity, improving the service quality in crowdsensing.
机译:为了实现隐私保护而不降低数据的可用性,需要在隐私保护之前和之后减少位置数据之间的位置数据误差,同时保持用户位置组的特征。针对上述要求,我们基于K-Anymonity算法和众所周知任务分配中的网格方法实现了基于群体的位置隐私。首先,基于目标区域中的用户的总密度确定初始电网尺寸,该目标区域的总密度将被分成网格单元。计算每个网格单元中的用户数,其与匿名参数K的关系影响到网格单元的下一个操作。其次,基于启发式搜索的启发式搜索群集结果,对网格合并进行了。然后,网格划分在需要基于地理中线的平衡分割的网格上进行。最后,为满足K-Anymooy要求的网格区域创建匿名区域,实现k-匿名位置隐私保护。实验表明,我们的方法可以最大限度地减少位置偏差,同时保持隐私保护强度,提高人群中的服务质量。

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