Multi-view embedding learning via robust joint nonnegative matrix factorization

Weihua Ou, Kesheng Zhang, Xinge You, Fei Long
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Abstract

Real data often are comprised of multiple modalities or different views, which provide complementary and consensus information to each other. Exploring those information is important for the multi-view data clustering and classification. Multiview embedding is an effective method for multiple view data which uncovers the common latent structure shared by different views. Previous studies assumed that each view is clean, or at least there are not contaminated by noises. However, in real tasks, it is often that every view might be suffered from noises or even some views are partially missing, which renders the traditional multi-view embedding algorithm fail to those cases. In this paper, we propose a novel multi-view embedding algorithm via robust joint nonnegative matrix factorization. We utilize the correntropy induced metric to measure the reconstruction error for each view, which are robust to the noises by assigning different weight for different entries. In order to uncover the common subspace shared by different views, we define a consensus matrix subspace to constrain the disagreement of different views. For the non-convex objective function, we formulate it into half quadratic minimization and solve it via update scheme efficiently. The experiments results show its effectiveness and robustness in multiview clustering.
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基于鲁棒联合非负矩阵分解的多视图嵌入学习
真实数据往往由多种模式或不同的观点组成,它们相互提供互补和一致的信息。探索这些信息对于多视图数据聚类和分类非常重要。多视图嵌入是一种有效的多视图数据处理方法,它揭示了不同视图共享的共同潜在结构。以前的研究假设每个视图都是干净的,或者至少没有被噪音污染。然而,在实际任务中,通常每个视图都可能受到噪声的影响,甚至某些视图部分缺失,这使得传统的多视图嵌入算法无法满足这些情况。本文提出了一种基于鲁棒联合非负矩阵分解的多视图嵌入算法。我们利用相关诱导度量来衡量每个视图的重建误差,通过为不同的条目分配不同的权重来增强对噪声的鲁棒性。为了揭示不同观点共享的公共子空间,我们定义了共识矩阵子空间来约束不同观点的不一致。对于非凸目标函数,我们将其化为半二次极小化,并通过更新格式高效地求解。实验结果表明了该方法在多视图聚类中的有效性和鲁棒性。
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