Partial Least Squares (PLS) refer to a class of dimension-reduction techniques aiming at the identification of two sets of components with maximal covariance, to model the relationship between two sets of observed variables $x\in\mathbb{R}^p$ and $y\in\mathbb{R}^q$, with $p\geq 1, q\geq 1$. Probabilistic formulations have recently been proposed for several versions of the PLS. Focusing first on the probabilistic formulation of the PLS-SVD proposed by el Bouhaddani et al., we establish that the constraints on their model parameters are too restrictive and define particular distributions for $(x,y)$, under which components with maximal covariance (solutions of PLS-SVD) are also necessarily of respective maximal variances (solutions of principal components analyses of $x$ and $y$, respectively). We propose an alternative probabilistic formulation of PLS-SVD, no longer restricted to these particular distributions. We then present numerical illustrations of the limitation of the original model of el Bouhaddani et al. We also briefly discuss similar limitations in another latent variable model for dimension-reduction.
翻译:部分最低方(PLS)是指一类降低维度技术,旨在确定两组具有最大共差的分数,以模拟两组观察到的变量($x\in\mathbb{R ⁇ p{R ⁇ p}和$y\in\mathbb{R ⁇ qq$,加上$p\geq1,q\geq 1美元)之间的关系。最近为PLS的若干版本提出了概率配方。首先侧重于El Bouhadddani等人提议的PLS-SVD的概率配方,我们确定其模型参数的局限性过于严格,并界定了美元(x,y)的具体分配,在这种配方下,具有最大共差的成分(PLS-SVD的溶方)也必然具有各自的最大差异(主要构件分析分别为$x和$y)。我们提议了PLS-S-SVD的替代性概率配方,不再局限于这些特定分布。我们随后还简要地说明在原始模型中如何限制Bouhad和Bouhad的另一种程度。