计算机科学
服务质量
移动QoS
边缘计算
差别隐私
GSM演进的增强数据速率
服务器
计算机网络
移动边缘计算
边缘设备
移动设备
服务(商务)
数据挖掘
人工智能
服务提供商
云计算
万维网
经济
经济
操作系统
作者
Pengcheng Zhang,Huiying Jin,Hai Dong,Wei Song,Athman Bouguettaya
标识
DOI:10.1109/tsc.2020.2977018
摘要
We propose a novel privacy-preserving QoS forecasting approach - Edge-Laplace QoS (QoS forecasting with Laplace noise in mobile Edge environments). Edge-Laplace QoS is able to accurately and efficiently forecast Quality of Service (QoS) of various Web Services, while effectively protecting user privacy in mobile edge environments. We employ an improved differential privacy method to add dynamic disguises to the original QoS data in the edge environment to protect user data privacy. A collaborative filtering method is adopted to retrieve similar users' accessing records based on geographic locations of their accessed servers for QoS forecasting. We conduct a set of experiments using several public network data sets. The results show that the efficiency of Edge-Laplace QoS is superior to traditional forecasting approaches. Edge-Laplace QoS is also validated to be more suitable for edge environments than traditional privacy-preserving approaches.
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