匿名驱动的隐私措施

Sevgi Arca, R. Hewett
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引用次数: 0

摘要

在当今世界,由于先进的数据收集、存储和分析技术,数字数据是巨大的。随着越来越多的数据被共享或公开,隐私受到了极大的关注。拥有隐私意味着对你的数据有控制权。隐私保护的第一步是了解隐私的各个方面,并有能力量化它们。然而,结构化数据的许多工作都集中在将原始数据转换为更匿名的形式(通过泛化和抑制)同时保持数据完整性的方法上。这种匿名化技术对每组感兴趣的不同属性值的数据实例进行计数,以表示保护个人身份或机密数据所需的匿名性。虽然这是为了达到目的,但我们的研究采取了另一种方法,通过匿名的方式提供快速的隐私措施,特别是在处理大规模数据时。本文基于影响隐私的相关属性对匿名措施进行了研究。具体来说,我们确定了三种属性:均匀性、多样性和多样性,并制定了它们的衡量标准。本文给出了实例来评估其有效性,并从多个方面讨论了匿名和隐私措施的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anonymity-driven Measures for Privacy
In today’s world, digital data are enormous due to technologies that advance data collection, storage, and analyses. As more data are shared or publicly available, privacy is of great concern. Having privacy means having control over your data. The first step towards privacy protection is to understand various aspects of privacy and have the ability to quantify them. Much work in structured data, however, has focused on approaches to transforming the original data into a more anonymous form (via generalization and suppression) while preserving the data integrity. Such anonymization techniques count data instances of each set of distinct attribute values of interest to signify the required anonymity to protect an individual’s identity or confidential data. While this serves the purpose, our research takes an alternative approach to provide quick privacy measures by way of anonymity especially when dealing with large-scale data. This paper presents a study of anonymity measures based on their relevant properties that impact privacy. Specifically, we identify three properties: uniformity, variety, and diversity, and formulate their measures. The paper provides illustrated examples to evaluate their validity and discusses the use of multi-aspects of anonymity and privacy measures.
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