基于隐私保护方法的分布式关联规则挖掘

Hua-jin Wang, Chun-an Hu, Jian-sheng Liu
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引用次数: 14

摘要

随着社会信息化的飞速发展,分布式数据库系统的应用越来越多。分布式数据挖掘将在数据挖掘中发挥重要作用。FDM算法作为一种著名的分布式关联规则挖掘算法,具有快速、高效的优点,但由于该算法是在非共享资源条件下设计的,其代价非常大。而且,每个站点的重要信息都暴露给其他站点,这与当今日益重视隐私保护的趋势不相符。本文提出了一种基于FDM算法的改进算法。在此过程中,采用保密性的方法计算总支持数,同时保证了每个本地大项目集的来源和本地支持数都被覆盖,从而减少了通信时间,保护了分布在各站点的数据的保密性。实验结果表明,该算法是有效的,适合于实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Mining of Association Rules Based on Privacy-Preserved Method
With the rapid development of social information, the application of distributed database system is increasing. Distributed data mining will play an important role in data mining. As one of the well-known distributed association rules mining algorithm, the FDM algorithm is very fast and efficient, however, the cost of this algorithm is very great because it is designed under the condition of non-shared resource. Moreover, the important information at every site is exposed to other sites, which is not accord to the nowadays trend of attaching importance to privacy preserving increasingly. In this paper, we propose an improved algorithm based on the FDM algorithm. In the process, it computes the total support count with the privacy-preserved method, meanwhile ensures the source of every local large item-set and local support count is covered, so it reduces the time spent on communication and preserves the privacy of the data distributed at each site. The experimental evaluations show that the proposed algorithm is efficient and rather suitable for the practical application field.
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