隐私保护Naïve基于可信第三方垂直分布场景的贝叶斯分类

Keshavamurthy B.N., Mitesh Sharma, Durga Toshniwal
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引用次数: 6

摘要

隐私保护是近年来研究的一个重要领域。由于技术的进步,大量的数字数据正在各个地方产生。有许多应用,如市场篮子分析,医学研究等,其中全球结果计算发挥了重要作用。合作各方通常希望在不向另一方透露个人详细信息的情况下,为其集成数据找到全局结果。关于垂直分区分布式数据库的隐私保护问题的研究很少。我们提出的新方法使用Naïve贝叶斯分类以及可信第三方和安全多方计算来保护分布式数据库的隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preservation Naïve Bayes Classification for a Vertically Distribution Scenario Using Trusted Third Party
Privacy preservation is an important area of research in recent years. Due to the advancement of technology, enormous digital data is being generated at various locations. There are many applications such as market basket analysis, medical research etc where the global results computation places a significant role. The collaborating parties are generally interested in finding the global results for their integrated data without revealing the personal details to the other party. There are few proposals which talk about privacy preservation of vertical partitioned distributed database. Our proposed novel approach preserves the privacy of the distributed databases, using Naïve Bayes Classification along with the trusted third party and secure multiparty computation.
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