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Practical Crowdsourcing of Wearable IoT Data with Local Differential Privacy

Published: 09 May 2023 Publication History

Abstract

In this work, we present and evaluate a crowdsourcing platform to collect wearable IoT data with local differential privacy (LDP). LDP protects privacy by perturbing data with noise, which may hinder their utility in some cases. For this reason, most researchers are wary of adopting it in their studies. To address these concerns, we consider the impact of different privacy budget values on the real wearable IoT data (steps, calories, distance, etc.) from N = 71 Fitbit users. Our goal is to demonstrate that, even if the collected information is protected with LDP, it is possible for data analysts to extract statistically significant insights on the studied population. To this end, we evaluate the error for various metrics of interest, such as sample average and empirical distribution. Furthermore, we verify that, in most cases, statistical tests produce the same results regardless of whether LDP has been applied or not. Our findings suggest that LDP with a privacy budget between 4 and 8 maintains an acceptable error of and over agreement on t-tests. Finally, we show that such values of privacy budget, albeit providing loose theoretical guarantees, can effectively defend against re-identification attacks on wearable IoT data.

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        cover image ACM Conferences
        IoTDI '23: Proceedings of the 8th ACM/IEEE Conference on Internet of Things Design and Implementation
        May 2023
        514 pages
        ISBN:9798400700378
        DOI:10.1145/3576842
        This work is licensed under a Creative Commons Attribution International 4.0 License.

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        Published: 09 May 2023

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        • (2024)Effective Sensor Selection for Human Activity Recognition via Shapley Value2024 IEEE International Workshop on Metrology for Living Environment (MetroLivEnv)10.1109/MetroLivEnv60384.2024.10615860(22-27)Online publication date: 12-Jun-2024
        • (2024)Evaluating the utility of human mobility data under local differential privacy2024 25th IEEE International Conference on Mobile Data Management (MDM)10.1109/MDM61037.2024.00029(67-76)Online publication date: 24-Jun-2024
        • (2024)Semi-Asynchronous Online Federated Crowdsourcing2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00319(4180-4193)Online publication date: 13-May-2024
        • (2024)Multi-sensor Data Privacy Protection with Adaptive Privacy Budget for IoT Systems2024 IEEE Conference on Communications and Network Security (CNS)10.1109/CNS62487.2024.10735696(1-9)Online publication date: 30-Sep-2024

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