论文标题
基于模态回归的结构化低率矩阵恢复用于多视图学习
Modal Regression based Structured Low-rank Matrix Recovery for Multi-view Learning
论文作者
论文摘要
近年来,低级别的多视图子空间学习(LMVSL)在跨视图分类方面具有巨大的潜力。尽管取得了经验成功,但现有的基于LMVSL的方法仍无法同时处理良好的处理视图差异和判别,因此当多视图数据之间存在较大的差异时,导致性能降解。为了避免以块对基形式的学习为动机的这一缺点,我们提出了结构化的低级矩阵恢复(SLMR),这是一种有效消除视图差异并通过恢复结构化的低率矩阵来改善判别的独特方法。此外,最近的低级建模提供了一个令人满意的解决方案,可以解决由噪声分布的预定义假设(例如高斯或拉普拉斯分布)污染的数据。但是,这些模型不实用,因为实际上复杂的噪声可能违反了这些假设,并且通常未知分布。为了减轻这种限制,模态回归优雅地纳入了SLMR的框架(it it MR-SLMR)。与以前的基于LMVSL的方法不同,我们的MR-SLMR可以处理包含各种噪声的任何零模式噪声变量,例如高斯噪声,随机噪声和异常值。乘数(ADMM)框架和半季度理论的交替方向方法用于有效地优化MR-SLMR。四个公共数据库的实验结果证明了MR-SLMR的优势及其对复杂噪声的鲁棒性。
Low-rank Multi-view Subspace Learning (LMvSL) has shown great potential in cross-view classification in recent years. Despite their empirical success, existing LMvSL based methods are incapable of well handling view discrepancy and discriminancy simultaneously, which thus leads to the performance degradation when there is a large discrepancy among multi-view data. To circumvent this drawback, motivated by the block-diagonal representation learning, we propose Structured Low-rank Matrix Recovery (SLMR), a unique method of effectively removing view discrepancy and improving discriminancy through the recovery of structured low-rank matrix. Furthermore, recent low-rank modeling provides a satisfactory solution to address data contaminated by predefined assumptions of noise distribution, such as Gaussian or Laplacian distribution. However, these models are not practical since complicated noise in practice may violate those assumptions and the distribution is generally unknown in advance. To alleviate such limitation, modal regression is elegantly incorporated into the framework of SLMR (term it MR-SLMR). Different from previous LMvSL based methods, our MR-SLMR can handle any zero-mode noise variable that contains a wide range of noise, such as Gaussian noise, random noise and outliers. The alternating direction method of multipliers (ADMM) framework and half-quadratic theory are used to efficiently optimize MR-SLMR. Experimental results on four public databases demonstrate the superiority of MR-SLMR and its robustness to complicated noise.