腕印:从佩戴在手腕上的加速度计数据中描述用户重新识别的风险。

Nazir Saleheen, Md Azim Ullah, Supriyo Chakraborty, Deniz S Ones, Mani Srivastava, Santosh Kumar
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引用次数: 4

摘要

公开发布的腕带运动传感器数据越来越多。它们促进并加速了开发新算法的研究,以被动地跟踪日常活动,从而改善了智能手表和活动追踪器的健康和保健功能。但是,当与敏感属性推理攻击和通过在多个数据集中重新识别同一用户的链接攻击相结合时,未公开的敏感属性可能会向无意的组织透露,从而对毫无防备的数据贡献用户产生潜在的不利后果。为了指导用户和数据收集研究人员,我们描述了在用户自然环境中从腕带设备收集的运动传感器数据所固有的重新识别风险。为此,我们使用开放集公式,训练具有新损失函数的深度学习架构,并将我们的模型应用于由353名用户每天佩戴传感器10周组成的新数据集。我们发现,重新识别风险随着活动强度的增加而增加。平均而言,用户共享一整天的传感器数据时,这种风险为96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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WristPrint: Characterizing User Re-identification Risks from Wrist-worn Accelerometry Data.

Public release of wrist-worn motion sensor data is growing. They enable and accelerate research in developing new algorithms to passively track daily activities, resulting in improved health and wellness utilities of smartwatches and activity trackers. But, when combined with sensitive attribute inference attack and linkage attack via re-identification of the same user in multiple datasets, undisclosed sensitive attributes can be revealed to unintended organizations with potentially adverse consequences for unsuspecting data contributing users. To guide both users and data collecting researchers, we characterize the re-identification risks inherent in motion sensor data collected from wrist-worn devices in users' natural environment. For this purpose, we use an open-set formulation, train a deep learning architecture with a new loss function, and apply our model to a new data set consisting of 10 weeks of daily sensor wearing by 353 users. We find that re-identification risk increases with an increase in the activity intensity. On average, such risk is 96% for a user when sharing a full day of sensor data.

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来源期刊
CiteScore
9.20
自引率
0.00%
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期刊最新文献
WristPrint: Characterizing User Re-identification Risks from Wrist-worn Accelerometry Data. CCS '21: 2021 ACM SIGSAC Conference on Computer and Communications Security, Virtual Event, Republic of Korea, November 15 - 19, 2021 WAHC '21: Proceedings of the 9th on Workshop on Encrypted Computing & Applied Homomorphic Cryptography, Virtual Event, Korea, 15 November 2021 Incremental Learning Algorithm of Data Complexity Based on KNN Classifier How to Accurately and Privately Identify Anomalies.
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