补语(音乐)
学位(音乐)
学位分布
差异(会计)
计算机科学
差别隐私
图形
算法
图论
财产(哲学)
分布(数学)
数学
理论计算机科学
复杂网络
组合数学
认识论
物理
会计
表型
基因
数学分析
万维网
哲学
业务
化学
互补
声学
生物化学
作者
Michael Hay,Chao Li,Gerome Miklau,David Jensen
摘要
We describe an efficient algorithm for releasing a provably private estimate of the degree distribution of a network. The algorithm satisfies a rigorous property of differential privacy, and is also extremely efficient, running on networks of 100 million nodes in a few seconds. Theoretical analysis shows that the error scales linearly with the number of unique degrees, whereas the error of conventional techniques scales linearly with the number of nodes. We complement the theoretical analysis with a thorough empirical analysis on real and synthetic graphs, showing that the algorithm's variance and bias is low, that the error diminishes as the size of the input graph increases, and that common analyses like fitting a power-law can be carried out very accurately.
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