Private Release of Graph Statistics using Ladder Functions

Jun Zhang, Graham Cormode, Cecilia M. Procopiuc, D. Srivastava, Xiaokui Xiao
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引用次数: 92

Abstract

Protecting the privacy of individuals in graph structured data while making accurate versions of the data available is one of the most challenging problems in data privacy. Most efforts to date to perform this data release end up mired in complexity, overwhelm the signal with noise, and are not effective for use in practice. In this paper, we introduce a new method which guarantees differential privacy. It specifies a probability distribution over possible outputs that is carefully defined to maximize the utility for the given input, while still providing the required privacy level. The distribution is designed to form a 'ladder', so that each output achieves the highest 'rung' (maximum probability) compared to less preferable outputs. We show how our ladder framework can be applied to problems of counting the number of occurrences of subgraphs, a vital objective in graph analysis, and give algorithms whose cost is comparable to that of computing the count exactly. Our experimental study confirms that our method outperforms existing methods for counting triangles and stars in terms of accuracy, and provides solutions for some problems for which no effective method was previously known. The results of our algorithms can be used to estimate the parameters of suitable graph models, allowing synthetic graphs to be sampled.
使用阶梯函数的图形统计私有发布
在提供准确的数据版本的同时保护图结构化数据中的个人隐私是数据隐私中最具挑战性的问题之一。迄今为止,执行这种数据发布的大多数努力最终都陷入了复杂性的泥潭,信号被噪声淹没,并且在实践中使用效果不佳。本文提出了一种保证差分隐私的新方法。它指定了可能输出的概率分布,该概率分布经过仔细定义,以最大化给定输入的效用,同时仍然提供所需的隐私级别。该分布被设计成形成一个“阶梯”,以便每个输出与较不理想的输出相比达到最高的“梯级”(最大概率)。我们展示了我们的阶梯框架如何应用于计算子图出现次数的问题,这是图分析中的一个重要目标,并给出了其成本与精确计算计数的成本相当的算法。我们的实验研究证实,我们的方法在精度上优于现有的三角形和星星计数方法,并为以前没有有效方法的一些问题提供了解决方案。我们的算法的结果可以用来估计合适的图模型的参数,允许合成图的采样。
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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