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首页> 外文期刊>IEEE transactions on dependable and secure computing >On Efficient and Robust Anonymization for Privacy Protection on Massive Streaming Categorical Information
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On Efficient and Robust Anonymization for Privacy Protection on Massive Streaming Categorical Information

机译:关于大规模流分类信息的隐私保护的高效鲁棒匿名化

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摘要

Protecting users' privacy when transmitting a large amount of data over the Internet is becoming increasingly important nowadays. In this paper, we focus on the streaming categorical information and propose a novel anonymization technique for providing a strong privacy protection to safeguard against privacy disclosure and information tampering. Our technique utilizes an innovative two-phase anonymization approach which is very easy to implement, highly efficient in terms of speed and communication and is robust against possible tampering from adversaries. Extensive experimental evaluation that is conducted demonstrates that our technique is very efficient and more robust than the existing method.
机译:如今,在Internet上传输大量数据时,保护用户的隐私变得越来越重要。在本文中,我们将重点放在流分类信息上,并提出一种新颖的匿名化技术,以提供强大的隐私保护,以防止隐私泄露和信息篡改。我们的技术采用了创新的两阶段匿名化方法,该方法非常易于实施,在速度和通信方面非常高效,并且能够抵抗对手的篡改。进行的广泛实验评估表明,我们的技术比现有方法非常有效且更可靠。

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