Unsupervised collaborative boosting of clustering: An unifying framework for multi-view clustering, multiple consensus clusterings and alternative clustering

Jacques-Henri Sublemontier
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引用次数: 5

Abstract

In this paper, we propose a collaborative framework that is able to solve multi-view and alternative clustering problems using some clustering ensemble and semi-supervised clustering principles. We provide a mechanism to control, via an information sharing model, different clustering algorithms to obtain consensus or alternative clustering solutions. The strong point is that our approach does not need to know which clustering algorithms to use nor their parameters.
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无监督协同提升聚类:多视图聚类、多共识聚类和替代聚类的统一框架
在本文中,我们提出了一个协作框架,该框架能够使用一些聚类集成和半监督聚类原理来解决多视图和备选聚类问题。我们提供了一种机制来控制,通过信息共享模型,不同的聚类算法,以获得共识或备选聚类解决方案。优点是我们的方法不需要知道使用哪种聚类算法及其参数。
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