IEEE Trans Cybern. 2021 Mar;51(3):1716-1727. doi: 10.1109/TCYB.2019.2950560. Epub 2021 Feb 17.
In multiview multilabel learning, each object is represented by several heterogeneous feature representations and is also annotated with a set of discrete nonexclusive labels. Previous studies typically focus on capturing the shared latent patterns among multiple views, while not sufficiently considering the diverse characteristics of individual views, which can cause performance degradation. In this article, we propose a novel approach [individuality- and commonality-based multiview multilabel learning (ICM2L)] to explicitly explore the individuality and commonality information of multilabel multiple view data in a unified model. Specifically, a common subspace is learned across different views to capture the shared patterns. Then, multiple individual classifiers are exploited to explore the characteristics of individual views. Next, an ensemble strategy is adopted to make a prediction. Finally, we develop an alternative solution to jointly optimize our model, which can enhance the robustness of the proposed model toward rare labels and reinforce the reciprocal effects of individuality and commonality among heterogeneous views, and thus further improve the performance. Experiments on various real-word datasets validate the effectiveness of ICM2L against the state-of-the-art solutions, and ICM2L can leverage the individuality and commonality information to achieve an improved performance as well as to enhance the robustness toward rare labels.
在多视图多标签学习中,每个对象由多个异构特征表示表示,并且还被注释有一组离散的非排他性标签。以前的研究通常侧重于捕捉多个视图之间的共享潜在模式,而没有充分考虑到各个视图的不同特征,这可能导致性能下降。在本文中,我们提出了一种新的方法[基于个体性和共性的多视图多标签学习 (ICM2L)],以在统一模型中显式探索多标签多视图数据的个体性和共性信息。具体来说,学习不同视图之间的公共子空间以捕获共享模式。然后,利用多个个体分类器来探索各个视图的特征。接下来,采用集成策略进行预测。最后,我们开发了一种替代方案来联合优化我们的模型,这可以增强模型对稀有标签的鲁棒性,并增强异构视图之间个体性和共性的相互影响,从而进一步提高性能。在各种真实数据集上的实验验证了 ICM2L 对现有解决方案的有效性,并且 ICM2L 可以利用个体性和共性信息来提高性能,并增强对稀有标签的鲁棒性。