论文标题

具有标签驱动的自动加权策略的多视图数据分类

Multi-view Data Classification with a Label-driven Auto-weighted Strategy

论文作者

Yu, Yuyuan, Zhou, Guoxu, Huang, Haonan, Xie, Shengli, Zhao, Qibin

论文摘要

事实证明,区分观点的重要性对半监督的多视图学习模型非常有帮助。但是,现有的策略不能利用半监督的信息,只能从数据特征角度区分观点的重要性,这通常会受到低质量视图的影响,从而导致性能不佳。在本文中,通过在标记的数据和不同观点的重要性之间建立联系,我们提出了一种自动加权策略,以从标签的角度评估观点的重要性,以避免对不重要或低质量观点的负面影响。基于此策略,我们提出了一个跨性半监督自动加权的多视图分类模型。可以通过标记的数据有效地确定所提出模型的初始化,这是实用的。该模型被分解为三个小规模的子问题,可以通过局部收敛保证有效地优化。分类任务的实验结果表明,与其他相关方法相比,所提出的方法以最低的计算成本达到最佳或最佳分类精度,而重量变化实验表明,我们所提出的策略比具有低品质视图的多视文数据集的其他相关策略可以更准确地区分观点重要性。

Distinguishing the importance of views has proven to be quite helpful for semi-supervised multi-view learning models. However, existing strategies cannot take advantage of semi-supervised information, only distinguishing the importance of views from a data feature perspective, which is often influenced by low-quality views then leading to poor performance. In this paper, by establishing a link between labeled data and the importance of different views, we propose an auto-weighted strategy to evaluate the importance of views from a label perspective to avoid the negative impact of unimportant or low-quality views. Based on this strategy, we propose a transductive semi-supervised auto-weighted multi-view classification model. The initialization of the proposed model can be effectively determined by labeled data, which is practical. The model is decoupled into three small-scale sub-problems that can efficiently be optimized with a local convergence guarantee. The experimental results on classification tasks show that the proposed method achieves optimal or sub-optimal classification accuracy at the lowest computational cost compared to other related methods, and the weight change experiments show that our proposed strategy can distinguish view importance more accurately than other related strategies on multi-view datasets with low-quality views.

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