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摘要:
Mobile apps are known to be rich sources for gathering privacy-sensitive information about smartphone users.Despite the presence of encryption,passive network adversaries who have access to the network infrastructure can eavesdrop on the traffic and therefore fingerprint a user’s app by means of packet-level traffic analysis.Since it is difficult to prevent the adversaries from accessing the network,providing secrecy in hostile environments becomes a serious concern.In this study,we propose AdaptiveMutate,a privacy-leak thwarting technique to defend against the statistical traffic analysis of apps.First,we present a method for the identification of mobile apps using traffic analysis.Further,we propose a confusion system in which we obfuscate packet lengths,and/or inter-arrival time information leaked by the mobile traffic to make it hard for intruders to differentiate between the altered app traffic and the actual one using statistical analysis.Our aim is to shape one class of app traffic to obscure its features with the minimum overhead.Our system strives to dynamically maximize its efficiency by matching each app with the corresponding most dissimilar app.Also,AdaptiveMutate has an adaptive capability that allows it to choose the most suitable feature to mutate,depending on the type of apps analyzed and the classifier used,if known.We evaluate the efficiency of our model by conducting a comprehensive simulation analysis that mutates different apps to each other using AdaptiveMutate.We conclude that our algorithm is most efficient when we mutate a feature of one app to its most dissimilar one in another app.When applying the identification technique,we achieve a classification accuracy of 91.1%.Then,using our obfuscation technique,we are able to reduce this accuracy to 7%.Also,we test our algorithm against a recently published approach for mobile apps classification and we are able to reduce its accuracy from 94.8%to 17.9%.Additionally,we analyze the tradeoff between the shaping cost and traffic privacy protec
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篇名 AdaptiveMutate:a technique for privacy preservation
来源期刊 数字通信与网络:英文版 学科 工学
关键词 Side-channel information App PROFILING OBFUSCATION Traffic classification PACKET length STATISTICS Inter-arrival time
年,卷(期) 2019,(4) 所属期刊栏目
研究方向 页码范围 245-255
页数 11页 分类号 TN9
字数 语种
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研究主题发展历程
节点文献
Side-channel
information
App
PROFILING
OBFUSCATION
Traffic
classification
PACKET
length
STATISTICS
Inter-arrival
time
研究起点
研究来源
研究分支
研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
数字通信与网络:英文版
季刊
2468-5925
50-1212/TN
重庆南岸区崇文路2号重庆邮电大学数字通信
78-45
出版文献量(篇)
11481
总下载数(次)
2
总被引数(次)
0
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