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边缘化多视图集成聚类

Marginalized Multiview Ensemble Clustering.

作者信息

Tao Zhiqiang, Liu Hongfu, Li Sheng, Ding Zhengming, Fu Yun

出版信息

IEEE Trans Neural Netw Learn Syst. 2020 Feb;31(2):600-611. doi: 10.1109/TNNLS.2019.2906867. Epub 2019 Apr 15.

Abstract

Multiview clustering (MVC), which aims to explore the underlying cluster structure shared by multiview data, has drawn more research efforts in recent years. To exploit the complementary information among multiple views, existing methods mainly learn a common latent subspace or develop a certain loss across different views, while ignoring the higher level information such as basic partitions (BPs) generated by the single-view clustering algorithm. In light of this, we propose a novel marginalized multiview ensemble clustering (MVEC) method in this paper. Specifically, we solve MVC in an EC way, which generates BPs for each view individually and seeks for a consensus one. By this means, we naturally leverage the complementary information of multiview data upon the same partition space. In order to boost the robustness of our approach, the marginalized denoising process is adopted to mimic the data corruptions and noises, which provides robust partition-level representations for each view by training a single-layer autoencoder. A low-rank and sparse decomposition is seamlessly incorporated into the denoising process to explicitly capture the consistency information and meanwhile compensate the distinctness between heterogeneous features. Spectral consensus graph partitioning is also involved by our model to make MVEC as a unified optimization framework. Moreover, a multilayer MVEC is eventually delivered in a stacked fashion to encapsulate nonlinearity into partition-level representations for handling complex data. Experimental results on eight real-world data sets show the efficacy of our approach compared with several state-of-the-art multiview and EC methods. We also showcase our method performs well with partial multiview data.

摘要

多视图聚类(MVC)旨在探索多视图数据共享的潜在聚类结构,近年来吸引了更多的研究关注。为了利用多个视图之间的互补信息,现有方法主要是学习一个公共的潜在子空间或在不同视图间开发某种损失函数,却忽略了诸如单视图聚类算法生成的基本划分(BP)等高层信息。鉴于此,我们在本文中提出了一种新颖的边缘化多视图集成聚类(MVEC)方法。具体而言,我们以集成聚类(EC)的方式解决MVC问题,即分别为每个视图生成BP并寻找一个一致的BP。通过这种方式,我们自然地在同一划分空间上利用了多视图数据的互补信息。为了提高我们方法的鲁棒性,采用边缘化去噪过程来模拟数据损坏和噪声,通过训练一个单层自动编码器为每个视图提供鲁棒的划分级表示。低秩和稀疏分解被无缝地纳入去噪过程,以显式地捕捉一致性信息,同时补偿异构特征之间的差异性。我们的模型还涉及谱一致性图划分,以使MVEC成为一个统一的优化框架。此外,最终以堆叠方式提供多层MVEC,将非线性封装到划分级表示中以处理复杂数据。在八个真实世界数据集上的实验结果表明,与几种最新的多视图和EC方法相比,我们的方法是有效的。我们还展示了我们的方法在部分多视图数据上表现良好。

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