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Collaborative clustering with heterogeneous algorithms

机译:异构算法的协同聚类

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The aim of collaborative clustering is to reveal the common underlying structures found by different algorithms while analyzing data. The fundamental concept of collaboration is that the clustering algorithms operate locally but collaborate by exchanging information about the local structures found by each algorithm. In this framework, the one purpose of this article is to introduce a new method which allows to reinforce the clustering process by exchanging information between several results acquired by different clustering algorithms. The originality of our proposed approach is that the collaboration step can use clustering results obtained from any type of algorithm during the local phase. This article gives the theoretical foundations of our approach as well as some experimental results. The proposed approach has been validated on several data sets and the results have shown to be very competitive.
机译:协作聚类的目的是揭示在分析数据时不同算法发现的常见底层结构。协作的基本概念是,聚类算法在本地运行,但通过交换有关每种算法找到的本地结构的信息来进行协作。在这种框架下,本文的一个目的是介绍一种新方法,该方法可以通过在由不同聚类算法获取的多个结果之间交换信息来加强聚类过程。我们提出的方法的独创性在于,协作步骤可以使用在本地阶段从任何类型的算法获得的聚类结果。本文为我们的方法提供了理论基础,并提供了一些实验结果。所提出的方法已在多个数据集上得到验证,结果显示出非常有竞争力。

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