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Iterative Spectral Method for Alternative Clustering

机译:交替聚类的迭代光谱方法

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Given a dataset and an existing clustering as input, alternative clustering aims to find an alternative partition. One of the state-of-the-art approaches is Kernel Dimension Alternative Clustering (KDAC). We propose a novel Iterative Spectral Method (ISM) that greatly improves the scalability of KDAC. Our algorithm is intuitive, relies on easily implementable spectral decompositions, and comes with theoretical guarantees. Its computation time improves upon existing implementations of KDAC by as much as 5 orders of magnitude.
机译:给定数据集和现有聚类作为输入,替代聚类旨在查找替代分区。最先进的方法之一是内核维替代聚类(KDAC)。我们提出了一种新颖的迭代频谱方法(ISM),该方法大大提高了KDAC的可伸缩性。我们的算法直观,依赖于易于实现的频谱分解,并具有理论上的保证。它的计算时间比KDAC的现有实现提高了多达5个数量级。

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