通过半有限编程进行社群检测的差分私有化草图求解法

Mohamed Seif;Yanxi Chen;Andrea J. Goldsmith;H. Vincent Poor
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引用次数: 0

摘要

我们研究了二元对称随机块模型(SBM)上的社群检测问题,同时保留了顶点之间单个连接的隐私性。我们提出并分析了相关的信息理论权衡,通过推导出社群内和社群间连接概率之间的充分分离条件,同时考虑到隐私预算和图草图作为一种加速技术来提高基于最大似然(ML)的恢复算法的计算复杂度,从而实现底层社群的不同隐私精确恢复。
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Differentially Private Sketch-and-Solve for Community Detection via Semidefinite Programming
We study the community detection problem over binary symmetric stochastic block models (SBMs) while preserving the privacy of the individual connections between the vertices. We present and analyze the associated information-theoretic tradeoff for differentially private exact recovery of the underlying communities by deriving sufficient separation conditions between the intra-community and inter-community connection probabilities while taking into account the privacy budget and graph sketching as a speed-up technique to improve the computational complexity of maximum likelihood (ML) based recovery algorithms.
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