Li Hua, Luo Wenya, Bai Zhidong, Zhou Huanchao, Pu Zhangni
IEEE Trans Pattern Anal Mach Intell. 2025 Mar;47(3):1991-1999. doi: 10.1109/TPAMI.2024.3511080.
This paper proposes an improved linear discriminant analysis called spectrally-corrected and regularized LDA (SRLDA). This approach incorporates design principles from both the spectrally-corrected covariance matrix and the regularized discriminant analysis. With the support of a large-dimensional random matrix theory, it is demonstrated that SRLDA achieves a globally optimal linear classification solution under the spiked model assumption. According to simulation data analysis, the SRLDA classifier exhibits better performance compared to RLDA and ILDA, closely to the theoretical classifier. Empirical experiments across diverse datasets further reflect that the SRLDA algorithm excels in both classification accuracy and dimensionality reduction, outperforming currently employed tools.
本文提出了一种改进的线性判别分析方法,称为频谱校正正则化线性判别分析(SRLDA)。该方法融合了频谱校正协方差矩阵和正则化判别分析的设计原则。在大维随机矩阵理论的支持下,证明了SRLDA在尖峰模型假设下能实现全局最优线性分类解。根据模拟数据分析,SRLDA分类器与RLDA和ILDA相比表现出更好的性能,与理论分类器相近。在不同数据集上的实证实验进一步表明,SRLDA算法在分类准确率和降维方面都表现出色,优于目前使用的工具。