Multi-view clustering is a learning paradigm based on multi-view data. Since statistic properties of different views are diverse, even incompatible, few approaches implement multi-view clustering based on the concatenated features straightforward. However, feature concatenation is a natural way to combine multi-view data. To this end, this paper proposes a novel multi-view subspace clustering approach dubbed Feature Concatenation Multi-view Subspace Clustering (FCMSC), which boosts the clustering performance by exploring the consensus information of multi-view data. Specifically, multi-view data are concatenated into a joint representation firstly, then, $l_{2,1}$-norm is integrated into the objective function to deal with the sample-specific and cluster-specific corruptions of multiple views. Moreover, a graph regularized FCMSC is also proposed in this paper to explore both the consensus information and complementary information of multi-view data for clustering. It is noteworthy that the obtained coefficient matrix is not derived by simply applying the Low-Rank Representation (LRR) to concatenated features directly. Finally, an effective algorithm based on the Augmented Lagrangian Multiplier (ALM) is designed to optimize the objective functions. Comprehensive experiments on six real-world datasets illustrate the superiority of the proposed methods over several state-of-the-art approaches for multi-view clustering.
翻译:多视角分组是一种基于多视角数据的学习模式。由于不同观点的统计数据属性各不相同,甚至不兼容,因此很少有方法能够基于直截了当的混合特征实施多视角分组。然而,特征组合是一种将多视角数据组合在一起的自然方式。为此,本文件还提出一种新型的多视角子空间分组方法,称为多视角组合,它通过探索多视角数据的协商一致信息来提高组合性能。具体地说,多视角数据首先被整合为联合代表,然后,$l ⁇ 2,1美元-诺尔姆被整合到目标功能中,以应对多个观点的样本和集体腐败。此外,本文件还提议采用一个图表化的多视角分组子空间分组方法,以探索多视角数据的协商一致信息和补充信息。值得注意的是,所获得的系数矩阵并非仅仅通过将低视角代表(LRRRR)直接用于配置的组合特征。最后,一个有效的算法,即基于GRAGAL-M-M 多重观点的多重观点组合方法,以构建了全球最佳模式的多个目标。