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Privacy-preserving Naive Bayes classification using trusted third party and different offset computation over distributed databases

机译:使用受信任的第三方和分布式数据库上的不同偏移量计算来保护隐私的朴素贝叶斯分类

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Privacy-preservation in distributed databases is an important area of research in recent years. In a typical scenario, multiple parties may be wish to collaborate to extract interesting global information such as class labels without revealing their respective data to each other. This may be particularly useful in applications such as car selling units, medical research etc. In the proposed work, we aim to develop a global classification model based on the Naïve Bayes classification scheme. The Naïve Bayes classification has been used because of its applicability in case of car-evaluation dataset. For privacy-preservation of the data, the concept of trusted third party with different offset has been used. The data is first anonymized at local party end and then the aggregation and global classification is done at the trusted third party. We have proposed algorithms and tested dataset for different distributed database scenarios such as horizontal, vertical and arbitrary partitions.
机译:近年来,分布式数据库中的隐私保存是一个重要的研究领域。在典型的情景中,多方可能希望协作以提取有趣的全局信息,例如类标签,而不会彼此揭示它们各自的数据。这在诸如汽车销售单位,医学研究等的应用中可能特别有用,我们旨在基于Naïve贝叶斯分类方案开发全球分类模型。由于其在汽车评估数据集的情况下,使用了Naïve贝叶斯分类。对于数据的隐私保留,已经使用了具有不同偏移的可信第三方的概念。数据首先在当地派对结束时匿名,然后在可信第三方完成聚合和全局分类。我们已经提出了用于不同分布式数据库场景的算法和测试数据集,例如水平,垂直和任意分区。

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