Graph Representation and Anonymization in Large Survey Rating Data

Xiaoxun Sun, Min Li
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引用次数: 3

Abstract

We study the challenges of protecting privacy of individuals in the large public survey rating data in this chapter. Recent study shows that personal information in supposedly anonymous movie rating records is de-identified. The survey rating data usually contains both ratings of sensitive and non-sensitive issues. The ratings of sensitive issues involve personal privacy. Even though the survey participants do not reveal any of their ratings, their survey records are potentially identifiable by using information from other public sources. None of the existing anonymisation principles can effectively prevent such breaches in large survey rating data sets. We tackle the problem by defining a principle called (k, ε)-anonymity model to protect privacy. Intuitively, the principle requires that, for each transaction t in the given survey rating data T, at least (k − 1) other transactions in T must have ratings similar to t, where the similarity is controlled by ε. The (k, ε)-anonymity model is formulated by its graphical representation and a specific graph-anonymisation problem is studied by adopting graph modification with graph theory. Various cases are analyzed and methods are developed to make the updated graph meet (k, ε) requirements. The methods are applied to two real-life data sets to demonstrate their efficiency and practical utility.
大型调查评级数据中的图表示与匿名化
在本章中,我们研究了在大型公众调查评级数据中保护个人隐私所面临的挑战。最近的研究表明,在所谓匿名的电影评分记录中,个人信息被去识别了。调查评级数据通常包含敏感问题和非敏感问题的评级。敏感问题的评级涉及个人隐私。即使调查参与者没有透露他们的任何评级,他们的调查记录也有可能通过使用其他公共来源的信息来识别。在大型调查评级数据集中,现有的匿名化原则都无法有效防止此类泄露。我们通过定义一个称为(k, ε)-匿名模型的原则来解决这个问题,以保护隐私。直观地说,该原理要求,对于给定调查评级数据t中的每个交易t, t中至少有(k−1)个其他交易必须具有与t相似的评级,其中相似性由ε控制。利用(k, ε)-匿名模型的图表示形式,利用图论的图修正方法研究了一个具体的图匿名问题。对各种情况进行了分析,并提出了使更新后的图满足(k, ε)要求的方法。将该方法应用于两个实际数据集,以证明其有效性和实用性。
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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