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Information Security in Big Data: Privacy and Data Mining

机译:大数据中的信息安全:隐私和数据挖掘

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The growing popularity and development of data mining technologies bring serious threat to the security of individual,’s sensitive information. An emerging research topic in data mining, known as privacy-preserving data mining (PPDM), has been extensively studied in recent years. The basic idea of PPDM is to modify the data in such a way so as to perform data mining algorithms effectively without compromising the security of sensitive information contained in the data. Current studies of PPDM mainly focus on how to reduce the privacy risk brought by data mining operations, while in fact, unwanted disclosure of sensitive information may also happen in the process of data collecting, data publishing, and information (i.e., the data mining results) delivering. In this paper, we view the privacy issues related to data mining from a wider perspective and investigate various approaches that can help to protect sensitive information. In particular, we identify four different types of users involved in data mining applications, namely, data provider, data collector, data miner, and decision maker. For each type of user, we discuss his privacy concerns and the methods that can be adopted to protect sensitive information. We briefly introduce the basics of related research topics, review state-of-the-art approaches, and present some preliminary thoughts on future research directions. Besides exploring the privacy-preserving approaches for each type of user, we also review the game theoretical approaches, which are proposed for analyzing the interactions among different users in a data mining scenario, each of whom has his own valuation on the sensitive information. By differentiating the responsibilities of different users with respect to security of sensitive information, we would like to provide some useful insights into the study of PPDM.
机译:数据挖掘技术的日益普及和发展对个人敏感信息的安全性构成了严重威胁。近年来,数据挖掘中的一个新兴研究主题,即隐私保护数据挖掘(PPDM),已经得到了广泛的研究。 PPDM的基本思想是修改数据,以便有效执行数据挖掘算法,而不会损害数据中包含的敏感信息的安全性。 PPDM当前的研究主要集中在如何减少数据挖掘操​​作带来的隐私风险,而事实上,在数据收集,数据发布和信息(即数据挖掘结果)过程中,敏感信息的不希望的泄露也可能发生。 )交付。在本文中,我们从更广泛的角度看待与数据挖掘相关的隐私问题,并研究可以帮助保护敏感信息的各种方法。特别是,我们确定了数据挖掘应用程序中涉及的四种不同类型的用户,即数据提供者,数据收集器,数据挖掘器和决策者。对于每种类型的用户,我们将讨论其隐私问题以及可以用来保护敏感信息的方法。我们简要介绍了相关研究主题的基础,回顾了最新的方法,并对未来的研究方向提出了一些初步的想法。除了探讨每种类型用户的隐私保护方法外,我们还回顾了博弈论方法,该方法旨在分析数据挖掘场景中不同用户之间的交互,每个人对敏感信息都有自己的评估。通过区分不同用户在敏感信息安全方面的职责,我们希望为PPDM的研究提供一些有用的见解。

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