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Privacy Protected Data Forwarding in Human Associated Delay Tolerant Networks

机译:隐私保护数据转发人类相关延迟容忍网络

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Human associated delay-tolerant networks (HDTNs) are new networks for DTNs, where mobile devices are associated with humans and demonstrate social related communication characteristics. As most of recent works use real social trace files to study the date forwarding in HDTNs, the privacy protection becomes a serious issue. Traditional privacy protections need to keep the attributes semantics, such as data mining and information retrieval. However, in HDTNs, it is not necessary to keep these meaningful semantics. In this paper, instead, we propose to anonymize the original data by coding to preserve individual's privacy and apply Privacy Protected Data Forwarding (PPDF) model to select the top N nodes to perform the multicast. We use both MIT Reality and Infocom 06 datasets, which are human associated mobile network trace file, to simulate our model. The results of our simulations show that this method can achieve a high data forwarding performance while protect the nodes' privacy as well.
机译:人类相关的延迟宽容网络(HDTNS)是DTN的新网络,其中移动设备与人类相关联并展示社交相关通信特征。由于最近的大多数作品使用真正的社交跟踪文件来研究HDTN中的日期转发,隐私保护成为一个严重的问题。传统的隐私保护需要保留属性语义,例如数据挖掘和信息检索。但是,在HDTN中,没有必要保留这些有意义的语义。相反,我们建议通过编码保留个人的隐私并应用隐私受保护数据转发(PPDF)模型来匿名匿名的原始数据,以选择顶部N节点以执行多播。我们使用MIT现实和InfoCom 06数据集,这是人类关联的移动网络跟踪文件,以模拟我们的模型。我们的模拟结果表明,此方法可以在保护节点的隐私时实现高数据转发性能。

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