基于随机数据扰动的保隐私序列模式挖掘

Weimin Ouyang
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引用次数: 1

摘要

隐私保护数据挖掘是大数据环境下数据挖掘的一个热点研究方向。如果数据挖掘使用不当,将危及隐私和信息安全。受此启发,我们研究了一种基于随机数据摄动的序列模式挖掘隐私保护方法。其策略如下:首先,在原始数据库的每个事件序列中加入有噪声的事件。然后,提出了一种PP-Span (Privacy-Preserving Sequential pattern mining)算法,从这些加了噪声的数据序列中重构出频繁序列。我们的结果表明,它可以优于许多传统的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving Mining Sequential Pattern based on Random Data Perturbation
Privacy preserving data mining is a hot research direction of data mining in the big data environment. If Data mining has been used properly, it will endanger the privacy and the information. Inspired by that, we researched a method via random data perturbation method to keep privacy preserving in sequential patterns mining. Its strategy is as follows: First, noisy events are added into each event sequence of the original database. Then, an algorithm PP-Span (Privacy-Preserving Sequential pattern mining) is proposed to reconstruct the frequent sequences from these noise-added data sequences. Our results showed that it can outperform a lot of traditional methods.
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