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A generic and distributed privacy preserving classification method with a worst-case privacy guarantee

机译:具有最坏情况隐私保证的通用和分布式隐私保护分类方法

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摘要

It is often necessary for organizations to perform data mining tasks col-laboratively without giving up their own data. This necessity has led to the development of privacy preserving distributed data mining. Several protocols exist which deal with data mining methods in a distributed scenario but most of these methods handle a single data mining task. Therefore, if the participating parties are interested in more than one classification methods they will have to go through a series of distributed protocols every time, thus increasing the overhead substantially. A second significant drawback with existing methods is that they are often quite expensive due to the use of encryption operations. In this paper a method has been proposed that addresses both these issues and provides a generic approach to efficient privacy preserving classification analysis in a distributed setting with a worst-case privacy guarantee. The experimental results demonstrate the effectiveness of this method.
机译:组织通常需要协同执行数据挖掘任务而又不放弃自己的数据。这种必要性导致了隐私保护分布式数据挖掘的发展。存在几种协议,这些协议处理分布式场景中的数据挖掘方法,但是其中大多数方法处理单个数据挖掘任务。因此,如果参与方对不止一种分类方法感兴趣,则它们每次都必须经过一系列分布式协议,从而大大增加了开销。现有方法的第二个明显的缺点是由于使用加密操作,它们通常非常昂贵。在本文中,已经提出了一种解决这两个问题的方法,并提供了一种在最坏情况下保证隐私的分布式环境中进行有效隐私保护分类分析的通用方法。实验结果证明了该方法的有效性。

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