University of the Basque Country UPV/EHU, San Sebastian, Spain.
Henan University, Kaifeng, China; University of the Basque Country UPV/EHU, San Sebastian, Spain; IKERBASQUE, Basque Foundation for Science, Bilbao, Spain.
Neural Netw. 2021 Apr;136:11-16. doi: 10.1016/j.neunet.2020.12.025. Epub 2020 Dec 30.
In recent times, feature extraction attracted much attention in machine learning and pattern recognition fields. This paper extends and improves a scheme for linear feature extraction that can be used in supervised multi-class classification problems. Inspired by recent frameworks for robust sparse LDA and Inter-class sparsity, we propose a unifying criterion able to retain the advantages of these two powerful linear discriminant methods. We introduce an iterative alternating minimization scheme in order to estimate the linear transformation and the orthogonal matrix. The linear transformation is efficiently updated via the steepest descent gradient technique. The proposed framework is generic in the sense that it allows the combination and tuning of other linear discriminant embedding methods. We used our proposed method to fine tune the linear solutions delivered by two recent linear methods: RSLDA and RDA_FSIS. Experiments have been conducted on public image datasets of different types including objects, faces, and digits. The proposed framework compared favorably with several competing methods.
近年来,特征提取在机器学习和模式识别领域引起了广泛关注。本文扩展和改进了一种可用于监督多类分类问题的线性特征提取方案。受最近用于稳健稀疏 LDA 和类间稀疏性的框架的启发,我们提出了一个统一的准则,能够保留这两种强大的线性判别方法的优势。我们引入了一种迭代交替最小化方案来估计线性变换和正交矩阵。线性变换通过最陡下降梯度技术进行有效更新。所提出的框架具有通用性,允许组合和调整其他线性判别嵌入方法。我们使用所提出的方法对两种最近的线性方法(RSLDA 和 RDA_FSIS)提供的线性解进行微调。实验在不同类型的公共图像数据集上进行,包括对象、人脸和数字。与几种竞争方法相比,所提出的框架表现出色。