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Secure Method for De-Identifying and Anonymizing Large Panel Datasets

机译:用于去识别和匿名的大面板数据集的安全方法

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Government agencies, as well as private companies, may need to share private information with third party organizations for various reasons. There exist legitimate concerns about disclosing the information of individuals, sensitive details of agencies and organizations, and other private information. Consequently, information shared with external parties may be redacted to hide confidential information about individuals and companies while providing essential data required by third parties in order to perform their duties. This paper presents a method to de-identify and anonymize large-scale panel data from an organization. The method can handle a variety of data types, and it is scalable to datasets of any size. The challenge of de-identification and anonymization a large-scale and diverse dataset is to protect individual identities and retain useful data in the presence of unstructured field data and unpredictable frequency distributions. This is addressed by analyzing the dataset and applying a filtering and aggregation method. This is accompanied by a streamlined implementation and post-validation process, which ensures the security of the organization's data, and the computational efficiency of the approach when handling large-scale panel data sets.
机译:政府机构以及私营公司可能需要出于各种原因与第三方组织分享私人信息。关于披露个人信息,机构和组织的敏感细节以及其他私人信息,存在合法担忧。因此,可以将与外部各方共享的信息进行编辑,以隐藏个人和公司的机密信息,同时提供第三方要求的基本数据以履行其职责。本文介绍了从组织中解除和匿名的大规模面板数据的方法。该方法可以处理各种数据类型,并且它是可伸缩到任何大小的数据集。取消识别和匿名化的挑战是大规模和多样化的数据集是在非结构化现场数据和不可预测的频率分布的存在下保护各个身份并保留有用的数据。通过分析数据集并应用过滤和聚合方法来解决这一点。这伴随着一个简化的实现和验证过程,可确保组织数据的安全性,以及在处理大型面板数据集时方法的计算效率。

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