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Clustering based on matrix approximation: a unifying view

机译:基于矩阵近似的聚类:统一视图

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摘要

Clustering is the problem of identifying the distribution of patterns and intrinsic correlations in large data sets by partitioning the data points into similarity classes. Recently, a number of methods have been proposed and demonstrated good performance based on matrix approximation. Despite significant research on these methods, few attempts have been made to establish the connections between them while highlighting their differences. In this paper, we present a unified view of these methods within a general clustering framework where the problem of clustering is formulated as matrix approximations and the clustering objective is minimizing the approximation error between the original data matrix and the reconstructed matrix based on the cluster structures. The general framework provides an elegant base to compare and understand various clustering methods. We provide characterizations of different clustering methods within the general framework including traditional one-side clustering, subspace clustering and two-side clustering. We also establish the connections between our general clustering framework with existing frameworks.
机译:聚类是通过将数据点划分为相似性类来识别大型数据集中模式和固有相关性分布的问题。近来,已经提出了许多方法并且基于矩阵逼近证明了良好的性能。尽管对这些方法进行了大量研究,但在强调它们之间的差异的同时,很少尝试建立它们之间的联系。在本文中,我们提出了在通用聚类框架内这些方法的统一视图,其中聚类问题被表述为矩阵近似,聚类的目的是使基于聚类结构的原始数据矩阵与重构矩阵之间的近似误差最小化。通用框架为比较和理解各种聚类方法提供了一个优雅的基础。我们在一般框架内提供了不同聚类方法的特征,包括传统的单面聚类,子空间聚类和两面聚类。我们还建立了通用集群框架与现有框架之间的联系。

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