限制申请表格中的数据收集:创始隐私原则的实际应用

N. Anciaux, Benjamin Nguyen, M. Vazirgiannis
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引用次数: 14

摘要

申请表格通常被公司和行政部门用来收集申请人的个人资料,并根据他们的具体情况定制服务。例如,税率、社会保险或个人贷款,通常是根据通过申请表格收集的一组个人数据来校准的。从隐私法律和指令的角度来看,为实现一项服务而收集的个人数据集必须限制在必要的最低限度。这减少了数据泄露对服务提供商和申请人的影响。在本文中,我们研究了在那些用于收集数据并随后提供决策过程的应用程序中限制数据收集的问题。在实际操作中,由于填写申请表时不知道哪些数据会真正影响决策,因此所收集的数据远远过多。为了克服这个问题,我们提出了一种相反的方法,即可以在用户端计算填写应用程序表单所需的严格要求的数据项集。我们形式化了潜在的NP困难优化问题,提出了计算解决方案的算法,并通过实验验证了它们。我们的建议大大减少了申请表格中填写的个人资料数量,同时仍然达到相同的决定。
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Limiting data collection in application forms: A real-case application of a founding privacy principle
Application forms are often used by companies and administrations to collect personal data about applicants and tailor services to their specific situation. For example, taxes rates, social care, or personal loans, are usually calibrated based on a set of personal data collected through application forms. In the eyes of privacy laws and directives, the set of personal data collected to achieve a service must be restricted to the minimum necessary. This reduces the impact of data breaches both in the interest of service providers and applicants. In this article, we study the problem of limiting data collection in those application forms, used to collect data and subsequently feed decision making processes. In practice, the set of data collected is far excessive because application forms are filled in without any means to know what data will really impact the decision. To overcome this problem, we propose a reverse approach, where the set of strictly required data items to fill in the application form can be computed on the user's side. We formalize the underlying NP Hard optimization problem, propose algorithms to compute a solution, and validate them with experiments. Our proposal leads to a significant reduction of the quantity of personal data filled in application forms while still reaching the same decision.
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