降维与私有数据发布的关系探讨

Bo-Chen Tai, Szu-Chuang Li, Yennun Huang, N. Suri, Pang-Chieh Wang
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引用次数: 3

摘要

促进数据所有者和数据分析师之间的数据共享非常重要,因为数据所有者并不总是具有处理和分析数据的能力。例如,世界各国政府开始向公众发布收集到的数据,以利用人群的数据分析能力。然而,一些隐私泄露事件使公众重新认识到隐私保护的重要性,从而产生了新的隐私法规。在现有研究中,降维在私有数据发布机制中发挥了重要作用,以提高效用,但其对隐私保护的影响尚未得到研究。在本研究中,我们进行了一系列实验,发现降维可以提供与k -匿名机制相似的隐私保护效果,并且可以作为k -匿名过程的预处理程序,以减少其泛化和抑制所需。
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Exploring the Relationship Between Dimensionality Reduction and Private Data Release
It is important to facilitate data sharing between data owners and data analysts as data owners do not always have the ability to process and analyze data. For example, governments around the world are starting to release collected data to the public to leverage data analysis competence of the crowd. However, some privacy leakage incidents have made the public to rediscover the importance of privacy protection, leading to new privacy regulations. In existing researches dimensionality reduction has played an important role in private data release mechanisms to improve utility but its influence on privacy protection has never been examined. In this study, we perform a series of experiments and found that dimensionality reduction could provide similar privacy protection effects as K-anonymity mechanisms, and it could work as a preprocessor of K-anonymity process to it to reduce the generalization and suppression needed.
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