A Privacy Enforcing Framework for Data Streams on the Edge

IF 5.1 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Emerging Topics in Computing Pub Date : 2023-09-27 DOI:10.1109/TETC.2023.3315131
Boris Sedlak;Ilir Murturi;Praveen Kumar Donta;Schahram Dustdar
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Abstract

Recent developments in machine learning (ML) allow for efficient data stream processing and also help in meeting various privacy requirements. Traditionally, predefined privacy policies are enforced in resource-rich and homogeneous environments such as in the cloud to protect sensitive information from being exposed. However, large amounts of data streams generated from heterogeneous IoT devices often result in high computational costs, cause network latency, and increase the chance of data interruption as data travels away from the source. Therefore, this article proposes a novel privacy-enforcing framework for transforming data streams by executing various privacy policies close to the data source. To achieve our proposed framework, we enable domain experts to specify high-level privacy policies in a human-readable form. Then, the edge-based runtime system analyzes data streams (i.e., generated from nearby IoT devices), interprets privacy policies (i.e., deployed on edge devices), and transforms data streams if privacy violations occur. Our proposed runtime mechanism uses a Deep Neural Networks (DNN) technique to detect privacy violations within the streamed data. Furthermore, we discuss the framework, processes of the approach, and the experiments carried out on a real-world testbed to validate its feasibility and applicability.
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边缘数据流隐私保护框架
机器学习(ML)的最新发展使高效数据流处理成为可能,同时也有助于满足各种隐私要求。传统上,预定义的隐私策略在资源丰富的同构环境(如云环境)中执行,以保护敏感信息不被暴露。然而,从异构物联网设备生成的大量数据流通常会导致高昂的计算成本,造成网络延迟,并在数据远离源头时增加数据中断的几率。因此,本文提出了一种新颖的隐私强制框架,通过在数据源附近执行各种隐私策略来转换数据流。为了实现我们提出的框架,我们让领域专家以人类可读的形式指定高级隐私策略。然后,基于边缘的运行时系统分析数据流(即从附近的物联网设备生成的数据流),解释隐私策略(即部署在边缘设备上的隐私策略),并在发生隐私侵犯时转换数据流。我们提出的运行时机制使用深度神经网络(DNN)技术检测数据流中的隐私侵犯行为。此外,我们还讨论了该方法的框架、流程以及在真实世界测试平台上进行的实验,以验证其可行性和适用性。
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来源期刊
IEEE Transactions on Emerging Topics in Computing
IEEE Transactions on Emerging Topics in Computing Computer Science-Computer Science (miscellaneous)
CiteScore
12.10
自引率
5.10%
发文量
113
期刊介绍: IEEE Transactions on Emerging Topics in Computing publishes papers on emerging aspects of computer science, computing technology, and computing applications not currently covered by other IEEE Computer Society Transactions. Some examples of emerging topics in computing include: IT for Green, Synthetic and organic computing structures and systems, Advanced analytics, Social/occupational computing, Location-based/client computer systems, Morphic computer design, Electronic game systems, & Health-care IT.
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Table of Contents Front Cover IEEE Transactions on Emerging Topics in Computing Information for Authors Special Section on Emerging Social Computing DALTON - Deep Local Learning in SNNs via local Weights and Surrogate-Derivative Transfer
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