差分隐私的关联规则挖掘

Hao Zhen, Bo-Cheng Chiou, Yao-Tung Tsou, S. Kuo, Pang-Chieh Wang
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引用次数: 1

摘要

关联分析是数据分析中的一项重要任务,它从事务数据集中发现所有共现关系(即频繁项集或可信关联规则)。关联规则可以帮助人们更好地发现模式并制定相应的策略。数据分析的过程可以高度概括为一组查询,其中每个查询都是数据集的实值函数。然而,在没有任何限制和保护的情况下,访问数据集回答查询可能会导致个人隐私的泄露。本文提出并实现了基于差分隐私算法的关联规则挖掘,该算法使用多个支持阈值来减少候选项目集的数量,同时反映项目的真实性质,并使用随机截断和统一分割来降低数据集的维数。我们还通过自适应分配隐私预算来稳定噪声尺度,并对整体隐私损失进行了约束。此外,我们证明了差分隐私算法的关联规则挖掘满足事后差分隐私,并通过一系列实验验证了差分隐私算法的关联规则挖掘的实用性。据我们所知,我们的工作是第一个在多个支持阈值下的差异私有关联规则挖掘算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association Rule Mining with Differential Privacy
Association analysis is an important task in data analysis to find all co-occurrence relationships (i.e., frequent itemsets or confident association rules) from the transactional dataset. An association rule can help people better discover patterns and develop corresponding strategies. The process of data analysis can be highly summarized as a set of queries, where each query is a real-valued function of the dataset. However, without any restriction and protection, accessing the dataset to answer the queries may lead to the disclosure of individual privacy. In this paper, we propose and implement the association rule mining with differential privacy algorithm, which uses multiple support thresholds to reduce the number of candidate itemsets while reflecting the real nature of the items, and uses random truncation and uniform partition to lower the dimensionality of the dataset. We also stabilize the noise scale by adaptively allocating the privacy budgets, and bound the overall privacy loss. In addition, we prove that the association rule mining with differential privacy algorithm satisfies ex post differential privacy, and verify the utility of our association rule mining with differential privacy algorithm through a series of experiments. To the best of our knowledge, our work is the first differentially private association rule mining algorithm under multiple support thresholds.
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