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Differentially Private Sketches for Jaccard Similarity Estimation

机译:Jaccard相似性估算的差异私有草图

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This paper describes two locally-differential private algorithms for releasing user vectors such that the Jaccard similarity between these vectors can be efficiently estimated. The basic building block is the well known MinHash method. To achieve a privacy-utility trade-off, Min-Hash is extended in two ways using variants of Generalized Randomized Response and the Laplace Mechanism. A theoretical analysis provides bounds on the absolute error and experiments show the utility-privacy trade-off on synthetic and real-world data. A full version of this paper is available at http://arxiv.org/abs/2008.08134.
机译:本文介绍了两个用于释放用户向量的本地差分私有算法,使得可以有效地估计这些向量之间的Jaccard相似性。 基本构建块是众所周知的Minhash方法。 为了实现隐私式权限,使用广义随机响应和拉普拉斯机制的变体以两种方式扩展MIN-HASH。 理论分析为绝对误差和实验提供了界限,显示了合成和现实世界数据的公用事业隐私权衡。 本文的完整版本可在http://arxiv.org/abs/2008.08134获取。

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