Service Quality Loss-aware Privacy Protection Mechanism in Edge-Cloud IoTs

Zice Sun, Yingjie Wang, Xiangrong Tong, Qingxian Pan, Wenyi Liu, Jiqiu Zhang
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引用次数: 1

Abstract

With the continuous development of edge computing, the application scope of mobile crowdsourcing (MCS) is constantly increasing. The distributed nature of edge computing can transmit data at the edge of processing to meet the needs of low latency. The trustworthiness of the third-party platform will affect the level of privacy protection, because managers of the platform may disclose the information of workers. Anonymous servers also belong to third-party platforms. For unreal third-party platforms, this paper recommends that workers first use the localized differential privacy mechanism to interfere with the real location information, and then upload it to an anonymous server to request services, called the localized differential anonymous privacy protection mechanism (LDNP). The two privacy protection mechanisms further enhance privacy protection, but exacerbate the loss of service quality. Therefore, this paper proposes to give corresponding compensation based on the authenticity of the location information uploaded by workers, so as to encourage more workers to upload real location information. Through comparative experiments on real data, the LDNP algorithm not only protects the location privacy of workers, but also maintains the availability of data. The simulation experiment verifies the effectiveness of the incentive mechanism.
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边缘云物联网中的服务质量丢失感知隐私保护机制
随着边缘计算的不断发展,移动众包(MCS)的应用范围不断扩大。边缘计算的分布式特性可以在处理的边缘传输数据,以满足低延迟的需求。第三方平台的可信度会影响到隐私保护的程度,因为平台的管理者可能会泄露员工的信息。匿名服务器也属于第三方平台。对于非真实的第三方平台,本文建议工作人员首先使用本地化差异隐私机制对真实位置信息进行干扰,然后将其上传到匿名服务器请求服务,称为本地化差异匿名隐私保护机制(LDNP)。两种隐私保护机制在进一步加强隐私保护的同时,也加剧了服务质量的损失。因此,本文提出根据员工上传的位置信息的真实性给予相应的补偿,以鼓励更多的员工上传真实的位置信息。通过对真实数据的对比实验,LDNP算法既保护了工作人员的位置隐私,又保持了数据的可用性。仿真实验验证了激励机制的有效性。
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