Nie Feiping, Chen Hong, Xiang Shiming, Zhang Changshui, Yan Shuicheng, Li Xuelong
IEEE Trans Neural Netw Learn Syst. 2024 Apr;35(4):5710-5720. doi: 10.1109/TNNLS.2022.3208944. Epub 2024 Apr 4.
Studying the relationship between linear discriminant analysis (LDA) and least squares regression (LSR) is of great theoretical and practical significance. It is well-known that the two-class LDA is equivalent to an LSR problem, and directly casting multiclass LDA as an LSR problem, however, becomes more challenging. Recent study reveals that the equivalence between multiclass LDA and LSR can be established based on a special class indicator matrix, but under a mild condition which may not hold under the scenarios with low-dimensional or oversampled data. In this article, we show that the equivalence between multiclass LDA and LSR can be established based on arbitrary linearly independent class indicator vectors and without any condition. In addition, we show that LDA is also equivalent to a constrained LSR based on the data-dependent indicator vectors. It can be concluded that under exactly the same mild condition, such two regressions are both equivalent to the null space LDA method. Illuminated by the equivalence of LDA and LSR, we propose a direct LDA classifier to replace the conventional framework of LDA plus extra classifier. Extensive experiments well validate the above theoretic analysis.
研究线性判别分析(LDA)与最小二乘回归(LSR)之间的关系具有重要的理论和实际意义。众所周知,两类LDA等同于一个LSR问题,然而,将多类LDA直接转化为一个LSR问题则更具挑战性。最近的研究表明,多类LDA与LSR之间的等价关系可以基于一个特殊的类指示矩阵建立,但在一个温和条件下,该条件在低维或过采样数据的场景中可能不成立。在本文中,我们表明多类LDA与LSR之间的等价关系可以基于任意线性独立的类指示向量建立,且无需任何条件。此外,我们表明LDA也等同于基于数据相关指示向量的约束LSR。可以得出结论,在完全相同的温和条件下,这两种回归都等同于零空间LDA方法。受LDA与LSR等价性的启发,我们提出了一种直接LDA分类器来取代传统的LDA加额外分类器的框架。大量实验充分验证了上述理论分析。