Multiple Sensitive Attributes Based Privacy Preserving Data Publishing

Jasmina N Vanasiwala, Nirali R. Nanavati
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引用次数: 1

Abstract

The advances in digital information applications facilitates the collection of huge amount of data about governments, healthcare, other organizations and individuals. To make this data available for researchers, businesses and other users, it needs to be released. This in turn increases the demand of exchanging and publishing this collected data. However, data in its original form, typically contains sensitive information about individuals and/or organizations, and publishing such data will violate individual or organizational privacy. Hence, Privacy Preserving Data Publishing (PPDP) provides methods and tools for publishing useful information while preserving data privacy. Before data is published to the concerned users, it is altered to maintain its privacy without compromising data utility, using various anonymization techniques. Real-time datasets contain different types of Multiple Sensitive Attributes (MSAs) (which could be numerical or categorical). Anonymization for only Single Sensitive Attribute is not suitable for functional usage. Thus, it is important to maintain the association between these MSAs and to preserve the privacy of Mixed (numerical and categorical) MSAs efficiently while working with high dimensional data. The main focus of this paper is to analyse the different schemes proposed in literature for PPDP of MSAs.
基于多敏感属性的隐私保护数据发布
数字信息应用程序的进步有助于收集有关政府、医疗保健、其他组织和个人的大量数据。为了让研究人员、企业和其他用户可以使用这些数据,需要将其发布。这反过来又增加了交换和发布收集到的数据的需求。然而,原始形式的数据通常包含有关个人和/或组织的敏感信息,发布此类数据将侵犯个人或组织的隐私。因此,隐私保护数据发布(PPDP)提供了在保护数据隐私的同时发布有用信息的方法和工具。在将数据发布给相关用户之前,使用各种匿名化技术对其进行修改,以在不损害数据效用的情况下维护其隐私。实时数据集包含不同类型的多敏感属性(msa)(可以是数值的或分类的)。仅对单个敏感属性进行匿名化不适合用于功能用途。因此,在处理高维数据时,重要的是维护这些msa之间的关联,并有效地保护混合(数值和分类)msa的私密性。本文的主要重点是分析文献中提出的msa PPDP的不同方案。
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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