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Review of scalable privacy protection techniques in mobile crowdsensing service for security of data

机译:述评移动众胶服务中可扩展隐私保护技术,以便数据安全

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Mobile crowdsensing is a service based on a group of different individuals that have a device. The MCS (Mobile crowdsensing) is used for communication and transferring of data. It is capable of sensing and computing such data that are based on some information such as measuring, mapping, analyzing, and estimating. It can be used for effective decision-making in-crowd. The data generated in by crowd is used for task generation, and the task is assigned to different users and requesters. Due to numerous jobs, there can be a situation of task similarity generates, which may affect the privacy of users or workers in crowdsensing. The problem of privacy can be solved with the help of privacy protection techniques in crowdsensing. This work aims to propose a system based MCS technique for Privacy protection of data with proper scalability. CPP (Crowdsensing Privacy Protection) taxonomy is used that is based on the comprehensiveness and fitness of good. The usefulness of the proposed arrangement is explained by ordering 30 state-of-the-art solutions. Improved consequences are based on extraordinary assets and diminish of different MCS privacy protection techniques. It can be concluded that by employing the MCS privacy protection system for securing user data based on detection and learning algorithms with accurate dimensions. This research investigates the current innovations and techniques in the field of MCS for scalable privacy protection. Different relevant algorithms are used for effective decision making for users and requestors of MCS.
机译:移动人群是一种服务,基于一组具有设备的不同个人。 MCS(移动人群)用于通信和传输数据。它能够感测和计算基于一些信息的这些数据,例如测量,映射,分析和估计。它可用于有效的决策中的人群。 Crowd中生成的数据用于任务生成,并且该任务被分配给不同的用户和请求者。由于众多工作,可能存在任务相似性的情况,这可能会影响众群中的用户或工人的隐私。隐私问题可以在众包中的隐私保护技术的帮助下解决。这项工作旨在提出基于系统的MCS技术,用于具有适当可扩展性的数据的隐私保护。 CPP(众持私隐保护)分类,基于良好的全面性和健康。通过订购30个最先进的解决方案来解释所提出的安排的有用性。改善后果是基于非凡的资产和递减不同的MCS隐私保护技术。可以得出结论,通过采用MCS隐私保护系统来保护用户数据基于具有准确尺寸的检测和学习算法来保护用户数据。本研究调查了MCS领域的当前创新和技术,以实现可扩展隐私保护。不同的相关算法用于MCS的用户和请求者的有效决策。

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