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Automated data-driven profiling: threats for group privacy

机译:自动数据驱动分析:团体隐私的威胁

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摘要

Purpose - User profiling with big data raises significant issues regarding privacy. Privacy studies typically focus on individual privacy; however, in the era of big data analytics, users are also targeted as members of specific groups, thus challenging their collective privacy with unidentified implications. Overall, this paper aims to argue that in the age of big data, there is a need to consider the collective aspects of privacy as well and to develop new ways of calculating privacy risks and identify privacy threats that emerge. Design/methodology/approach - Focusing on a collective level, the authors conducted an extensive literature review related to information privacy and concepts of social identity. They also examined numerous automated data-driven profiling techniques analyzing at the same time the involved privacy issues for groups. Findings - This paper identifies privacy threats for collective entities that stem from data-driven profiling, and it argues that privacy-preserving mechanisms are required to protect the privacy interests of groups as entities, independently of the interests of their individual members. Moreover, this paper concludes that collective privacy threats may be different from threats for individuals when they are not members of a group. Originality/value - Although research evidence indicates that in the age of big data privacy as a collective issue is becoming increasingly important, the pluralist character of privacy has not yet been adequately explored. This paper contributes to filling this gap and provides new insights with regard to threats for group privacy and their impact on collective entities and society.
机译:目的 - 用大数据进行分析引发了有关隐私的重大问题。隐私研究通常关注个人隐私;但是,在大数据分析的时代,用户也被作为特定群体的成员的目标,从而挑战了他们的集体隐私,并具有不明的含义。总体而言,本文旨在争辩说,在大数据时代,有必要考虑隐私的集体方面,并开发新的计算隐私风险的方法并确定出现的隐私威胁。设计/方法/方法 - 着重于集体层面,作者进行了与信息隐私和社会认同概念有关的广泛文献综述。他们还检查了许多自动数据驱动的分析技术,同时分析了涉及的团体隐私问题。调查结果 - 本文确定了源于数据驱动的分析的集体实体的隐私威胁,并认为具有隐私的机制是必需的,以保护团体作为实体的隐私利益,独立于其个人成员的利益。此外,本文得出结论,集体隐私威胁可能与个人不是团体成员时的威胁不同。原创性/价值 - 尽管研究证据表明,在大数据隐私时代,作为集体问题的时代变得越来越重要,但尚未充分探索隐私的多元化特征。本文有助于填补这一空白,并就团体隐私的威胁及其对集体实体和社会的影响提供新的见解。

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