Optimally Hiding Object Sizes with Constrained Padding

Andrew C. Reed, M. Reiter
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引用次数: 1

Abstract

Among the most challenging traffic-analysis attacks to confound are those leveraging the sizes of objects downloaded over the network. In this paper we systematically analyze this problem under realistic constraints regarding the padding overhead that the object store is willing to incur. We give algorithms to compute privacy-optimal padding schemes—specifically that minimize the network observer's information gain from a downloaded object's padded size—in several scenarios of interest: per-object padding, in which the object store responds to each request for an object with the same padded copy; per-request padding, in which the object store pads an object anew each time it serves that object; and a scenario unlike the previous ones in that the object store is unable to leverage a known distribution over the object queries. We provide constructions for privacy-optimal padding in each case, compare them to recent contenders in the research literature, and evaluate their performance on practical datasets.
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最佳隐藏对象大小与约束填充
最具挑战性的流量分析攻击是那些利用通过网络下载的对象大小的攻击。在本文中,我们系统地分析了这个问题在现实的约束下,关于填充开销,对象存储愿意招致。我们给出了计算隐私最优填充方案的算法——特别是最小化网络观察者从下载对象的填充大小中获得的信息——在几个感兴趣的场景中:每个对象填充,其中对象存储用相同的填充副本响应对对象的每个请求;每次请求填充(Per-request padding),对象存储库在每次服务一个对象时重新填充一个对象;与前面的场景不同的是,对象存储无法在对象查询上利用已知的分布。我们在每种情况下都提供了隐私最优填充的结构,将它们与研究文献中的最新竞争者进行比较,并评估它们在实际数据集上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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