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Enhancing the Efficiency in Privacy Preserving Learning of Decision Trees in Partitioned Databases

机译:提高分区数据库中决策树的隐私保护学习效率

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This paper considers a scenario where two parties having private databases wish to cooperate by computing a data mining algorithm on the union of their databases without revealing any unnecessary information. In particular, they want to apply the decision tree learning algorithm ID3 in a privacy preserving manner. Lindell and Pinkas (2002) have presented a protocol for this purpose, which enjoys a formal proof of privacy and is considerably more efficient than generic solutions. The crucial point of their protocol is the approximation of the logarithm function by a truncated Taylor series. The present paper improves this approximation by using a suitable Chebyshev expansion. This approach results in a considerably more efficient new version of the protocol.
机译:本文考虑了这样一种情况,即拥有私有数据库的两方希望通过在其数据库的并集上计算数据挖掘算法而不透露任何不必要的信息来进行合作。特别地,他们希望以隐私保护的方式应用决策树学习算法ID3。 Lindell和Pinkas(2002)为此目的提出了一种协议,该协议享有正式的隐私证明,并且比通用解决方案有效得多。他们协议的关键点是通过截断的泰勒级数逼近对数函数。本文通过使用合适的Chebyshev展开来改进这种近似。这种方法导致该协议的新版本效率大大提高。

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