As we all know, multi-view data is more expressive than single-view data and multi-label annotation enjoys richer supervision information than single-label, which makes multi-view multi-label learning widely applicable for various pattern recognition tasks. In this complex representation learning problem, three main challenges can be characterized as follows: i) How to learn consistent representations of samples across all views? ii) How to exploit and utilize category correlations of multi-label to guide inference? iii) How to avoid the negative impact resulting from the incompleteness of views or labels? To cope with these problems, we propose a general multi-view multi-label learning framework named label-guided masked view- and category-aware transformers in this paper. First, we design two transformer-style based modules for cross-view features aggregation and multi-label classification, respectively. The former aggregates information from different views in the process of extracting view-specific features, and the latter learns subcategory embedding to improve classification performance. Second, considering the imbalance of expressive power among views, an adaptively weighted view fusion module is proposed to obtain view-consistent embedding features. Third, we impose a label manifold constraint in sample-level representation learning to maximize the utilization of supervised information. Last but not least, all the modules are designed under the premise of incomplete views and labels, which makes our method adaptable to arbitrary multi-view and multi-label data. Extensive experiments on five datasets confirm that our method has clear advantages over other state-of-the-art methods.
翻译:我们都知道,多视图数据比单一视图数据和多标签注解更清晰,比单一标签更具有更丰富的监督信息;为了处理这些问题,我们提议了一个名为标签引导的多视图多标签学习多标签学习框架,它使多视图多标签学习广泛适用于各种模式识别任务。在这一复杂的代表性学习问题中,可以分为以下三大挑战:一)如何从各种观点中学习一致的样本表述?二)如何利用和利用多标签的类别相关性,以指导推断?三)如何避免观点或标签不完整所产生的负面影响?为解决这些问题,我们提议了一个名为标签引导的多视角多标签学习框架,让多标签引导的多标签和类别认知变异器广泛应用。首先,我们设计了两种基于变异式的模块,分别用于交叉视图特征汇总和多标签分类; 如何利用多标签过程中不同观点的汇总信息,以及后者学习子类的分类,以提高分类绩效; 其次,考虑到各种观点之间的表达力不平衡,一个适应性加权观点模块在本文中最不易调整的组合化组合,而在最后设计的多类型标签中,要采用一种最难分流化的缩化的方法。</s>