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A Graph Enrichment Based Clustering over Vertically Partitioned Data

机译:基于图富集的垂直分区数据聚类

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Several researchers have illustrated that data privacy is an important and inevitable constraint when dealing with distributed knowledge discovery. The challenge is to obtain valid results while preserving this property in each related party. In this paper, we propose a new approach based on enrichment of graphs where each party does the cluster of each entity (instance), but does nothing about the attributes (features or variables) of the other parties. Furthermore, no information is given about the clustering algorithms which provide the different partitions. Finally, experiment results are provided for validating our proposal over some known data sets.
机译:一些研究人员已经说明,在处理分布式知识发现时,数据隐私是一个重要且不可避免的约束。面临的挑战是要在保留每个关联方的这一属性的同时获得有效的结果。在本文中,我们提出了一种基于图充实的新方法,其中,当事方进行每个实体(实例)的聚类,而对另一方的属性(特征或变量)不做任何事情。此外,没有提供有关提供不同分区的聚类算法的信息。最后,提供了实验结果,以验证我们在某些已知数据集上的建议。

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