人与人交互的局部差异隐私

Yuichi Sei;Akihiko Ohsuga
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引用次数: 0

摘要

目前,许多全球组织收集个人数据用于营销、推荐系统改进和其他目的。一些组织基于一种被称为$\epsilon$的技术——本地差异隐私(LDP)来安全地收集个人数据。在LDP下,隐私预算是预先分配给每个用户的。每次收集用户的数据时,都会消耗用户的隐私预算,并通过确保剩余的隐私预算大于或等于零来保护他们的隐私。现有的研究和组织假设每个人的数据与其他人的数据完全无关。然而,在从用户那里收集用户之间的交互数据的情况下,这一假设并不成立。在这种情况下,每个用户的隐私都没有得到充分的保护,因为隐私预算实际上超支了。在这项研究中,人与人之间互动的局部差异隐私问题得到了澄清。我们提出了一种在人与人交互场景中满足LDP的机制。数学分析和实验结果表明,与现有方法相比,该机制在保证LDP的同时,可以保持较高的数据利用率。
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Local Differential Privacy for Person-to-Person Interactions
Currently, many global organizations collect personal data for marketing, recommendation system improvement, and other purposes. Some organizations collect personal data securely based on a technique known as $\epsilon$ -local differential privacy (LDP). Under LDP, a privacy budget is allocated to each user in advance. Each time the user's data are collected, the user's privacy budget is consumed, and their privacy is protected by ensuring that the remaining privacy budget is greater than or equal to zero. Existing research and organizations assume that each individual's data are completely unrelated to other individuals' data. However, this assumption does not hold in a situation where interaction data between users are collected from them. In this case, each user's privacy is not sufficiently protected because the privacy budget is actually overspent. In this study, the issue of local differential privacy for person-to-person interactions is clarified. We propose a mechanism that satisfies LDP in a person-to-person interaction scenario. Mathematical analysis and experimental results show that the proposed mechanism can maintain high data utility while ensuring LDP compared to existing methods.
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