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Hierarchical PSO Clustering on MapReduce for Scalable Privacy Preservation in Big Data

机译:MapReduce上的分层PSO集群在大数据中进行可扩展隐私保存

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Today organizations are deeply involved in the Big Data era as the amount of data has been exploding with un-predictable rate and coming from various sources. To process and analyze this massive data, privacy is a major concern together with utility of data. Thus, privacy preservation techniques which target at the balance between utility and privacy begin to be one of the recent trends for big data researchers. In this paper, we discuss a technique for big data privacy preservation by means of clustering method. Here, hierarchical particle swarm optimization (HPSO) is used for clustering similar data. To attain scalability for big data, our method is constructed on the novel cloud infrastructure, MapReduce Hadoop. The method is tested by using a novel UCI dataset and the results are compared with an existing approach.
机译:今天组织深入参与大数据时代,因为数据的数量一直以不可预测的率和来自各种来源爆炸。要处理和分析这种大规模数据,隐私是与数据的效用一起的主要问题。因此,在实用程序和隐私之间的平衡中瞄准的隐私保存技术开始成为大数据研究人员最近的趋势之一。在本文中,我们讨论了通过聚类方法进行大数据隐私保存的技术。这里,分层粒子群优化(HPSO)用于群集类似的数据。为了实现大数据的可扩展性,我们的方法是在新颖的云基础架构上构建的MapReduce Hadoop。通过使用新颖的UCI数据集来测试该方法,并将结果与​​现有方法进行比较。

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