Yu Yuyuan, Zhou Guoxu, Zheng Ning, Qiu Yuning, Xie Shengli, Zhao Qibin
IEEE Trans Cybern. 2023 May;53(5):3114-3127. doi: 10.1109/TCYB.2022.3157133. Epub 2023 Apr 21.
Tensor-ring (TR) decomposition is a powerful tool for exploiting the low-rank property of multiway data and has been demonstrated great potential in a variety of important applications. In this article, non-negative TR (NTR) decomposition and graph-regularized NTR (GNTR) decomposition are proposed. The former equips TR decomposition with the ability to learn the parts-based representation by imposing non-negativity on the core tensors, and the latter additionally introduces a graph regularization to the NTR model to capture manifold geometry information from tensor data. Both of the proposed models extend TR decomposition and can be served as powerful representation learning tools for non-negative multiway data. The optimization algorithms based on an accelerated proximal gradient are derived for NTR and GNTR. We also empirically justified that the proposed methods can provide more interpretable and physically meaningful representations. For example, they are able to extract parts-based components with meaningful color and line patterns from objects. Extensive experimental results demonstrated that the proposed methods have better performance than state-of-the-art tensor-based methods in clustering and classification tasks.
张量环(TR)分解是一种用于挖掘多路数据低秩特性的强大工具,并且已在各种重要应用中展现出巨大潜力。本文提出了非负TR(NTR)分解和图正则化NTR(GNTR)分解。前者通过对核心张量施加非负性,使TR分解具备学习基于部分表示的能力,后者则在NTR模型中额外引入图正则化,以从张量数据中捕捉流形几何信息。所提出的这两种模型都扩展了TR分解,并且可以作为用于非负多路数据的强大表示学习工具。针对NTR和GNTR推导了基于加速近端梯度的优化算法。我们还通过实验证明,所提出的方法能够提供更具可解释性和物理意义的表示。例如,它们能够从物体中提取具有有意义颜色和线条图案的基于部分的组件。大量实验结果表明,在聚类和分类任务中,所提出的方法比基于张量的现有方法具有更好的性能。