光谱嵌入聚类:样本内和样本外光谱聚类的框架。

IEEE transactions on neural networks Pub Date : 2011-11-01 Epub Date: 2011-09-29 DOI:10.1109/TNN.2011.2162000
Feiping Nie, Zinan Zeng, Ivor W Tsang, Dong Xu, Changshui Zhang
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引用次数: 285

摘要

光谱聚类(SC)方法已经成功地应用于许多实际应用中。这些SC方法的成功很大程度上基于流形假设,即在低维数据流形的高密度区域中的两个邻近数据点具有相同的聚类标签。然而,这种假设可能并不总是适用于高维数据。当数据不表现出清晰的低维流形结构时(如高维稀疏数据),SC的聚类性能会下降,甚至比K均值聚类更差。基于观察到高维数据的真实聚类分配矩阵总是可以嵌入到数据所跨越的线性空间中,我们提出了频谱嵌入聚类(SEC)框架,该框架将线性正则化明确地加入到SC方法的目标函数中。更重要的是,拟议的SEC框架可以自然地处理样本外数据。我们还提出了一个由每个模式的局部回归构造的新的拉普拉斯矩阵,并将其纳入我们的SEC框架中,以捕获局部和全局判别信息用于聚类。在8个真实世界的高维数据集上进行的综合实验表明,我们的SEC框架比现有的SC方法和基于k均值的聚类方法具有有效性和优势。我们的SEC框架在不可见数据上使用Nyström算法显著优于SC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral embedded clustering: a framework for in-sample and out-of-sample spectral clustering.

Spectral clustering (SC) methods have been successfully applied to many real-world applications. The success of these SC methods is largely based on the manifold assumption, namely, that two nearby data points in the high-density region of a low-dimensional data manifold have the same cluster label. However, such an assumption might not always hold on high-dimensional data. When the data do not exhibit a clear low-dimensional manifold structure (e.g., high-dimensional and sparse data), the clustering performance of SC will be degraded and become even worse than K -means clustering. In this paper, motivated by the observation that the true cluster assignment matrix for high-dimensional data can be always embedded in a linear space spanned by the data, we propose the spectral embedded clustering (SEC) framework, in which a linearity regularization is explicitly added into the objective function of SC methods. More importantly, the proposed SEC framework can naturally deal with out-of-sample data. We also present a new Laplacian matrix constructed from a local regression of each pattern and incorporate it into our SEC framework to capture both local and global discriminative information for clustering. Comprehensive experiments on eight real-world high-dimensional datasets demonstrate the effectiveness and advantages of our SEC framework over existing SC methods and K-means-based clustering methods. Our SEC framework significantly outperforms SC using the Nyström algorithm on unseen data.

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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
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8.7 months
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